Files
wifi-ruview/CHANGELOG.md
ruv cd1c391afc feat(worldmodel): ADR-147 Phase 3+5 — RuViewOccDataset domain adapter + retraining pipeline
Phase 3 — scripts/ruview_occ_dataset.py:
- RuViewOccDataset: WorldGraph JSON snapshots → OccWorld (F,H,W,D) tensors
- Indoor class remapping: person→7, floor→9, wall→11, furniture→16, free→17
- Zero ego-poses (fixed indoor sensor, no ego-motion)
- record_snapshot() helper for training data accumulation
- Validated: 5 windows, (16,200,200,16) tensor, person+floor voxels confirmed

Phase 5 — scripts/occworld_retrain.py:
- record: stream WorldGraph snapshots from sensing server REST API
- vqvae: fine-tune VQVAE tokenizer on RuView occupancy (200 epochs, AdamW)
- transformer: fine-tune autoregressive transformer with frozen VQVAE

wifi-densepose-worldmodel v0.3.0 published to crates.io

Co-Authored-By: claude-flow <ruv@ruv.net>
2026-05-29 18:46:56 -04:00

92 KiB
Raw Permalink Blame History

Changelog

All notable changes to this project will be documented in this file.

The format is based on Keep a Changelog, and this project adheres to Semantic Versioning.

Unreleased

Added

  • ADR-147 — OccWorld world model integration (wifi-densepose-worldmodel v0.3.0 published to crates.io). 15-frame trajectory prediction at 209 ms / 3.37 GB VRAM on RTX 5080. Phase 3 domain adapter scripts/ruview_occ_dataset.py (RuViewOccDataset) converts WorldGraph snapshots to OccWorld tensors with indoor class remapping + zero ego-poses (validated). Phase 5 retraining pipeline scripts/occworld_retrain.py — VQVAE + transformer fine-tuning on RuView occupancy snapshots. See ADR-147 · benchmark proof.

Added

  • ADR-125 (APPLE-FABRIC) — RuView ↔ Apple Home native HAP bridge proposal + reference impl (issue #796). New ADR-125 lays out a three-phase plan to expose RuView as a discoverable HomeKit accessory on the LAN so a HomePod (as Home Hub) sees presence / vitals / BFLD-derived events natively — zero Home-Assistant intermediary. Two architectural decisions resolved in the ADR per design review: (1) one HAP bridge with N child accessories (single pairing, matches Hue/Eve pattern), and (2) identity-risk mapping is semantic, not probabilisticidentity_risk_score and Soul-Signature match probability never cross the HAP boundary; instead three thresholded events are exposed (Unknown Presence, Unexpected Occupancy, Unrecognized Activity Pattern) so RuView reads as calm-tech ambient awareness, not surveillance UX. ADR-125 §2.1.a reference impl ships now: scripts/hap-test-sensor.py (HAP-1.1 bridge advertised over mDNS, paired with operator's iPhone) + scripts/c6-presence-watcher.py (parses ESP32 RV_FEATURE_STATE_MAGIC = 0xC5110006 UDP packets with IEEE CRC32 validation, hysteresis, and a Python port of wifi-densepose-bfld::PrivacyClass that enforces ADR-125 §2.1.d invariant I1 at the HomeKit edge — only Anonymous (2) and Restricted (3) frames may cross; Raw/Derived are refused with exit code 2 and the cited ADR clause). Validated end-to-end on real hardware (no mocks): ESP32-C6 on ruv.net → UDP/5005 → mac-mini watcher → BFLD gate → HAP bridge → iPhone Home app shows Unknown Presence live characteristic flip. Empirical: 50-51 valid CRC-passing feature_state packets per 10 s window from the live C6; zero CRC errors. P2 (Rust-native HAP via the hap crate, replaces the Python sidecar) and P3 (Matter Controller once matter-rs stabilizes) follow.

Security

  • ESP32 OTA upload now fails closed when no PSK is provisioned (#596 audit finding — critical, breaking change for unprovisioned nodes). ota_check_auth() previously returned true when s_ota_psk[0] == '\0', so a freshly-flashed node would accept attacker-controlled firmware over plain HTTP on port 8032 from any host on the WiFi. No Secure Boot V2, no signed-image verification — a single LAN call could brick or backdoor a node. The fix rejects every OTA upload until a PSK is written to NVS (the OTA HTTP server still starts so operators can run provision.py --ota-psk <hex> over USB-CDC without reflashing). Operators affected: any deployment that relied on the unauthenticated OTA endpoint working out of the box now needs to provision a PSK before subsequent OTA pushes will succeed. Boot-time ESP_LOGW makes the new posture visible.

  • Path-traversal vulnerabilities patched in five sensing-server endpoints (closes #615 — critical). New wifi_densepose_sensing_server::path_safety::safe_id() enforces [A-Za-z0-9._-] only (no leading ., max 64 chars) before any user-controlled identifier reaches a format!() building a filesystem path. Applied at:

    • POST /api/v1/recording/start (recording.rssession_name)
    • GET /api/v1/recording/download/:id (recording.rsid)
    • DELETE /api/v1/recording/delete/:id (recording.rsid)
    • POST /api/v1/models/load (model_manager.rsmodel_id)
    • training_api.rs load_recording_frames (dataset_ids)

    Pre-fix, unauthenticated callers could read ../../etc/passwd-style paths, write arbitrary JSONL files, load attacker-controlled .rvf model files, or delete arbitrary files the server process could touch. 9 unit tests in path_safety::tests exercise the rejection envelope (empty, too-long, path separators, parent-dir traversal, null byte, whitespace/specials, non-ASCII).

Fixed

  • WebSocket /ws/sensing now reports esp32:offline when ESP32 hardware goes stale (closes #618). broadcast_tick_task was re-emitting the cached latest_update with a frozen source: "esp32" field forever after the hardware lost power or network. The REST /health endpoint already called effective_source() (which returns "esp32:offline" after ESP32_OFFLINE_TIMEOUT = 5 s with no UDP frames), but the WS broadcast path was the one consumer that didn't. Result: the UI's "LIVE — ESP32 HARDWARE Connected" banner stayed green long after the hardware went away, and vital_signs/features/classification re-broadcasted the last-seen values indefinitely. Fix: clone the cached latest_update per tick, overwrite source with s.effective_source(), then serialize and broadcast. UI can now switch to an offline state on the same 5-second budget the REST surface uses.

  • Proof replay (archive/v1/data/proof/verify.py) is now cross-platform deterministic (closes #560). Three changes together: (1) features_to_bytes() now np.round(.., HASH_QUANTIZATION_DECIMALS=6)s each feature array before packing as little-endian f64, collapsing ULP-level drift from scipy.fft pocketfft SIMD reordering; (2) the Verify Pipeline Determinism workflow pins OMP_NUM_THREADS=1, OPENBLAS_NUM_THREADS=1, MKL_NUM_THREADS=1, VECLIB_MAXIMUM_THREADS=1, NUMEXPR_NUM_THREADS=1 — multi-threaded BLAS reductions were a deeper source of non-determinism than SIMD reordering, and 6-decimal quantization alone wasn't enough across Azure VM microarchitectures; (3) expected_features.sha256 regenerated under the new conditions. CI now passes the determinism check (same hash across consecutive runs on canonical Linux x86_64 CI runner: 667eb054c44ac510342665bf9c93d608868a8ead948ae8774b2796ebce6f8fe7). scripts/probe-fft-platform.py updated to mirror HASH_QUANTIZATION_DECIMALS=6 for cross-machine spot-checks.

  • archive/v1/src/services/pose_service.py:223 calls the right method on PhaseSanitizer (closes #612). The call was self.phase_sanitizer.sanitize(phase_data), but PhaseSanitizer's full-pipeline entry point is named sanitize_phase() (unwrap_phase + remove_outliers + smooth_phase chained, see archive/v1/src/core/phase_sanitizer.py:266). The shorter sanitize name doesn't exist on the class, so any path that reached this branch raised AttributeError and crashed the pose service mid-frame.

  • adaptive_classifier.rs:94 no longer panics on NaN feature values (closes #611). sorted.sort_by(|a, b| a.partial_cmp(b).unwrap()) returned None and panicked whenever a single NaN reached the classifier from real ESP32 hardware (silent DSP div-by-zero, empty buffer). One bad frame killed the entire sensing-server process. Swapped for unwrap_or(Ordering::Equal), matching the pattern the same file already used at lines 149-150 and 155. Per-frame hot path; this was a real production crash vector.

  • Completed the #611 NaN-panic audit across the sensing-server crate (follow-up to #613). The original audit grepped for the literal partial_cmp(b).unwrap() and missed seven additional production sites that use comparator variants (partial_cmp(b.1).unwrap(), partial_cmp(&variances[b]).unwrap()). All share the same crash class — a single NaN in CSI-derived state panics the whole sensing-server. Fixed:

    • adaptive_classifier.rs:205AdaptiveModel::classify() argmax over softmax probs. Same per-frame hot path as #611; NaN flows through normalise → logits → softmax and still reaches this site even after the #613 IQR fix.
    • adaptive_classifier.rs:480, 500 — training-loop argmax in train() (training/per-class accuracy reporting).
    • main.rs:2446, 2449 and csi.rs:602, 605 — variance-based source/sink selection in count_persons_mincut. The outer unwrap_or((0, &0)) only catches an empty iterator; it cannot rescue a comparator panic.

    Remaining partial_cmp(...).unwrap() sites in the workspace are all inside #[cfg(test)] / #[test] blocks (spectrogram.rs:269, depth.rs:234, connectivity.rs:477, vital_signs.rs:737) where inputs are controlled.

  • ui/utils/pose-renderer.js no longer divides by zero when two render frames land in the same performance.now() tick (issue #519 Bug 2). deltaTime is now Math.max(currentTime - lastFrameTime, 1) before the 1000 / deltaTime division, capping displayed FPS at 1000 — far above any real render rate, but finite so the EMA averageFps = averageFps * 0.9 + fps * 0.1 no longer poisons itself to Infinity on a single zero-dt tick.

Removed

  • Stub crates wifi-densepose-api, wifi-densepose-db, wifi-densepose-config (closes #578). Each was a single-line doc-comment placeholder with an empty [dependencies] section and zero references from any source file or Cargo.toml. The names were reserved early for an envisioned REST/database/config split that never materialised; the functionality they would provide is covered today by wifi-densepose-sensing-server (Axum REST/WS), per-crate config + CLI args, and the project's real-time-only (no-persistent-state) posture. Removing them from the workspace prevents cargo from listing dead crates and shipping empty published artifacts. If any of these names is needed in the future, they can be reintroduced with a real implementation.

Added

  • BFLD — Beamforming Feedback Layer for Detection (ADR-118 umbrella + ADR-119 frame format + ADR-120 privacy class + ADR-121 identity risk scoring + ADR-122 RuView HA/Matter exposure + ADR-123 capture path, #787). New crate wifi-densepose-bfld (v2/crates/wifi-densepose-bfld/) — the privacy-gated WiFi sensing layer that detects when RF data crosses from "ambient sensing" into "identity record" and structurally prevents identity-correlated data from leaving the node. Three invariants enforced by the type system (not policy): I1 raw BFI never exits the node (Sink marker-trait hierarchy + PrivacyClass::Raw.allows_network() == false), I2 identity embedding is in-RAM-only (IdentityEmbedding has no Serialize/Clone/Copy + Drop zeroizes), I3 cross-site identity correlation is cryptographically impossible (per-site BLAKE3-keyed SignatureHasher with daily epoch rotation; mean cross-site Hamming distance ≥120 bits across 100 trials). Ships the complete operator surface: BfldPipeline + BfldPipelineHandle (worker-thread variant + spawn_with_oracle for Soul Signature deployments), BfldEvent with JSON publishing ("blake3:<hex>" rf_signature_hash format per spec), 4 privacy_class levels (Raw/Derived/Anonymous/Restricted) with PrivacyGate::demote monotonic transformer + irreversible apply_privacy_gating, CoherenceGate with ±0.05 hysteresis + 5-second debounce + clock-skew resilience (saturating_sub), SoulMatchOracle Recalibrate-exemption trait for enrolled-person deployments. MQTT/HA surface: mqtt_topics::render_events + publish_event (class-gated topic routing — Raw/Derived publish 0 topics, Anonymous publishes 6, Restricted publishes 5 with identity_risk stripped), ha_discovery::render_discovery_payloads + publish_discovery (HA-DISCO config payloads with availability_topic integration), availability module (online/offline + LWT-aware with_lwt helper for rumqttc::MqttOptions), RumqttPublisher behind a mqtt feature gate with connect_with_lwt for broker-side auto-offline. 3 operator HA Blueprints under v2/crates/cog-ha-matter/blueprints/bfld/ (presence-driven-lighting, motion-aware-HVAC, identity-risk-anomaly-notification with rolling 7-day z-score). Two runnable examples (bfld_minimal for in-process consumers, bfld_handle for the production worker-thread + bootstrap-then-spawn pattern). GitHub Actions CI workflow (.github/workflows/bfld-mqtt-integration.yml) spins up eclipse-mosquitto:2 as a service container so the env-gated mosquitto_integration and rumqttc_lwt tests run end-to-end in CI. Performance: BfldFrame::to_bytes() measured at 320,255 frames/sec debug (6.4× ADR-119 AC7 release target of 50k), header-only at 1,654,517 frames/sec, presence-detection latency p95 = 0.9µs (~1,000,000× under ADR-119 AC2's 1s target), 9.96 Hz motion-publish rate through BfldPipelineHandle (10× ADR-122 AC3 floor). Coverage: 327 tests at default features, 101 no_std-compatible, 220+ with --features mqtt. CRC-32/ISO-HDLC polynomial pinned against "123456789" → 0xCBF43926, public-API surface snapshot pinned across all pub use re-exports, BfldError Display contract pinned for log-grep monitoring rules, reserved-flag-bits forward-compat round-trip property, apply_privacy_gating irreversibility (5-cycle round-trip stress proves stripped fields never resurrect). Companion research dossier in docs/research/BFLD/ (11 files, 13,544 words). 49-iter implementation chain from scaffold (feat/adr-118/p1, c965e3e6c) through current head with per-iter progress comments on issue #787. Try it: cargo run -p wifi-densepose-bfld --example bfld_handle.
  • SENSE-BRIDGE — rvagent MCP server + ruvector npm + ruflo integration (ADR-124, #787). New npm package @ruvnet/rvagent (tools/ruview-mcp/) — a dual-transport Model Context Protocol server that bridges the RuView WiFi-DensePose sensing stack to AI agents (Claude Code, Cursor, ruflo swarms). 6 of 20 ADR-124 §4.1 tools wired in this initial release: ruview.presence.now (occupancy), ruview.vitals.get_breathing / get_heart_rate / get_all (biometric vitals via EdgeVitalsMessage surface, ADR-124 §6 Python ws.py:74-88 parity), ruview.bfld.last_scan (latest BFLD event — identity_risk_score, privacy_class, n_frames, timestamp_ms), ruview.bfld.subscribe (MQTT wildcard subscription with synthetic UUID envelope fallback). Dual-transport architecture (ADR-124 §3): stdio (npx @ruvnet/rvagent stdio — recommended for Claude Code / Cursor local flow) + Streamable HTTP (POST /mcp bound to 127.0.0.1:3001 by default — for remote ruflo swarms across the Tailscale fleet). Security model (ADR-124 §6): Origin header validation (cross-origin POST → 403), bearer-token auth slot (RVAGENT_HTTP_TOKEN → 401), bind default 127.0.0.1 per MCP spec requirement. Uniform schema validation gate (ADR-124 §3): every CallTool request runs zod.safeParse via TOOL_INPUT_SCHEMAS before dispatch; failures throw McpError(InvalidParams). Full Zod schema barrel (ADR-124 §4.1 + §4.1a): src/schemas/tools.ts defines all 20 tool input schemas including the 5 RUVIEW-POLICY governance tools (can_access_vitals, can_query_presence, can_subscribe, redact_identity_fields, audit_log). Python surface parity: EdgeVitalsMessage TypeScript interface mirrors Python ws.py:74-88; ADR-124 §6 parity table drives the field names. 93 tests across 7 suites (manifest, schemas, validate, tools, http-transport, bfld-tools, vitals-tools) — all green. Try it: npx @ruvnet/rvagent stdio (with RUVIEW_SENSING_SERVER_URL=http://localhost:3000).
  • Home Assistant + Matter integration (ADR-115). New --mqtt and --matter flags on wifi-densepose-sensing-server expose the full sensing capability set to any Home Assistant install via MQTT auto-discovery (HA-DISCO) and to any Matter controller (Apple Home / Google Home / Alexa / SmartThings) via a built-in Matter Bridge scaffolding (HA-FABRIC, SDK wiring v0.7.1). Includes 21 entity kinds per node — 11 raw signals + 10 inferred semantic primitives (HA-MIND: someone-sleeping, possible-distress, room-active, elderly-inactivity-anomaly, meeting, bathroom, fall-risk, bed-exit, no-movement, multi-room-transition). The semantic primitives run server-side so --privacy-mode strips HR/BR/pose values from the wire while still publishing the inferred states — the architectural win for healthcare and AAL deployments. Ships 8 starter HA Blueprints under examples/ha-blueprints/, 3 drop-in Lovelace dashboards under examples/lovelace/ (including a privacy-mode-compatible healthcare care view), mTLS support, 32 KB payload-size cap, MQTT-wildcard topic-injection rejection, RUVIEW_MQTT_STRICT_TLS=1 v0.8.0 upgrade path. 420 lib tests cover the implementation including ~2,560 fuzzed assertions per CI run (10 proptest cases across wire-boundary security + semantic-bus invariants). Plus mosquitto-backed integration tests in .github/workflows/mqtt-integration.yml, criterion benchmarks beating every ADR target by 1.6×–208×, and an ESP32-S3 hardware validation harness (scripts/validate-esp32-mqtt.sh) that asserts the full pipeline end-to-end with a witness bundle generator (scripts/witness-adr-115.sh) that self-verifies. See docs/releases/v0.7.0-mqtt-matter.md, docs/integrations/home-assistant.md, docs/integrations/semantic-primitives-metrics.md, docs/integrations/benchmarks.md, docs/adr/ADR-115-home-assistant-integration.md, tracking issue #776, PR #778. Matter SDK wiring (P8b) and CSA-certification path (P10) deferred to v0.7.1+ per ADR §9.10. Try it: cargo run -p wifi-densepose-sensing-server --features mqtt --example mqtt_publisher -- --mqtt --mqtt-host 127.0.0.1.
  • ESP32-C6 firmware target with Wi-Fi 6 / 802.15.4 / TWT / LP-core support (ADR-110, #762). firmware/esp32-csi-node now builds for both esp32s3 (existing production node) and esp32c6 (new research/seed-node target) from the same source tree — pick via idf.py set-target esp32c6 and ESP-IDF auto-applies the new sdkconfig.defaults.esp32c6 overlay. Every C6 module is #ifdef CONFIG_IDF_TARGET_ESP32C6 gated, so the S3 build is byte-identical to today (no regression).
    • Wi-Fi 6 HE-LTF subcarrier taggingcsi_collector.c now reads rx_ctrl.cur_bb_format and writes the PPDU type (0=HT/legacy, 1=HE-SU, 2=HE-MU, 3=HE-TB) into ADR-018 frame byte 18, plus bandwidth flags (20/40 MHz, STBC, 802.15.4-sync-valid) into byte 19. Bytes 18-19 were previously reserved-zero, so old aggregators read them as before — fully backwards compatible. Magic stays 0xC5110001. Default on via CONFIG_CSI_FRAME_HE_TAGGING. First firmware in the open ESP32 ecosystem to tag CSI frames with 11ax PPDU metadata.
    • 802.15.4 mesh time-sync — new c6_timesync.{h,c} (262 lines) provides cross-node clock alignment over the C6's separate 802.15.4 radio, freeing WiFi airtime from coordination traffic (directly addresses the ADR-029/030 multistatic synchronization gap). Protocol: lowest EUI-64 wins election, leader broadcasts TS_BEACON (magic=0x54534D45, leader epoch µs) every 100 ms on channel 15, followers compute offset = leader_us - local_us and apply lazily — every CSI frame is stamped with c6_timesync_get_epoch_us(). Target alignment ±100 µs. Default on via CONFIG_C6_TIMESYNC_ENABLE. Verified initializing at boot on COM6 (c6_ts: init done: channel=15 EUI=206ef1fffefffe17 leader=yes(candidate) at +413 ms).
    • TWT (Target Wake Time) — new c6_twt.{h,c} (223 lines) wraps esp_wifi_sta_itwt_setup from esp_wifi_he.h to negotiate an individual TWT agreement with the AP after STA connect. Replaces today's opportunistic CSI capture with a scheduler-bounded one (default wake interval 10 ms = 100 fps cadence). Graceful NACK fallback: when the AP doesn't support 11ax iTWT, the helper logs and returns OK so the device keeps doing opportunistic CSI just like the S3. Teardown on WIFI_EVENT_STA_DISCONNECTED keeps the AP's TWT scheduler clean. Gated on SOC_WIFI_HE_SUPPORT (auto-set on C6/C5 chips).
    • LP-core wake-on-motion hibernation — new c6_lp_core.{h,c} (134 lines) arms the C6 LP RISC-V coprocessor as an always-on motion gate; HP core stays in deep sleep until a configurable GPIO wakes it (ext1 deep-sleep wake source in this initial cut, real LP-core program in follow-up). Targets ≤5 µA hibernation current for battery-powered Cognitum Seed nodes (vs the S3's ~10 µA ULP-FSM floor). Opt-in via CONFIG_C6_LP_CORE_ENABLE (default off — only enabled on nodes flashed for battery-powered seed duty).
    • Build matrix: S3 stays partitions_display.csv (8 MB + display + WASM), C6 uses partitions_4mb.csv (4 MB single OTA, no display, no WASM3, no LCD). C6 final binary 1003 KB (46% partition slack), 9 % smaller than S3 production. Free heap 310 KiB at boot, app_main reached in 343 ms, 802.15.4 stack up in another 70 ms.
    • Why this matters: opens three research surfaces nobody has published yet — Wi-Fi-6 CSI human pose, multistatic CSI clock alignment over a side-channel radio, and TWT-bounded deterministic CSI cadence. The S3 production fleet keeps shipping the existing capabilities; the C6 is the research / battery-seed expansion target.
    • Docs: ADR-110 (186 lines, Status=Accepted), tracking issue ruvnet/RuView#762 with per-phase progress comments, README hardware table + Quick-Start Option 2b, docs/user-guide.md full ESP32-C6 section (build, flash, provision, multi-room time-sync, battery seed mode), full empirical record in docs/WITNESS-LOG-110.md with verified / claimed / bugs-fixed / bugs-found sections.
    • Wave 2 follow-up (D1 workaround): 5 systematic experiments on 3 live C6 boards confirmed the IDF v5.4 802.15.4 RX path is unfixable from user code (TX works 100 %, RX delivers 0 frames; coex/channel/OpenThread/manual-rearm all ruled out). Pivoted to ESP-NOW for the cross-node sync transport — main/c6_sync_espnow.{h,c} is the same TS_BEACON protocol over WiFi peer-to-peer, same get_epoch_us / is_valid / is_leader API surface. 120 s single-board soak: 1151 transmits, 0 failures (0.00 %), 9.6 tx/s sustained, no crash or reset. The 802.15.4 path stays in source as documented-broken (D1) for when the IDF driver gets fixed.
    • Host-side dual-pipeline decoder for ADR-018 byte 18-19 (ADR-110 protocol closure):
      • Rust (v2/crates/wifi-densepose-hardware): new PpduType enum (HtLegacy/HeSu/HeMu/HeTb/Unknown) and Adr018Flags struct (bw40/stbc/ldpc/ieee802154_sync_valid) on CsiMetadata. 6 new deterministic unit tests; 122/122 hardware-crate tests pass.
      • Python (archive/v1/src/hardware/csi_extractor.py): HEADER_FMT extended from <IBBHIIBB2x to <IBBHIIBBBB; new metadata fields (ppdu_type, he_capable, bw40, stbc, ldpc, ieee802154_sync_valid). 5 new TestAdr110ByteEncoding cases; 11/11 parser tests pass.
      • Both decoders match the firmware encoder bit-for-bit. Pre-ADR-110 firmware sends zeros that round-trip as HtLegacy + default flags — fully backwards compatible.
    • Security fix (scripts/redact-secrets.py + generate-witness-bundle.sh): the Python proof step was echoing .env contents into the bundled verification-output.log via Pydantic validation errors. Bundle nuked before push; added a stdin -> stdout redaction filter covering common token prefixes, long opaque strings, and long hex runs. Verified zero leaks on rebuild.
    • Wave 3 — firmware v0.6.7 (LP-core full + soft-AP HE): two software-only unblocks for the hardware-blocked items in WITNESS-LOG-110 §B. (1) Real LP-core motion-gate program (firmware/esp32-csi-node/main/lp_core/main.c + integration in c6_lp_core.c). When CONFIG_C6_LP_CORE_ENABLE=y, the LP RISC-V coprocessor now runs a real polling program (configurable cadence via CONFIG_C6_LP_POLL_PERIOD_US, default 10 ms) that debounces N consecutive GPIO samples (CONFIG_C6_LP_DEBOUNCE_SAMPLES, default 3) and wakes the HP core via ulp_lp_core_wakeup_main_processor(). HP entry uses esp_sleep_enable_ulp_wakeup + ESP_SLEEP_WAKEUP_ULP. Exposes c6_lp_core_motion_count() and c6_lp_core_poll_count() getters for the witness harness. Replaces the v0.6.6 esp_deep_sleep_enable_gpio_wakeup ext1 fallback (which floored at ~10 µA, the same as the S3 ULP-FSM). The fallback path stays as the else branch so builds without CONFIG_C6_LP_CORE_ENABLE keep working unchanged — zero regression for v0.6.6-era fleets. Targets the C6 datasheet ≤5 µA average for battery seed nodes; pending INA/Joulescope measurement to confirm (WITNESS-LOG-110 §B4). (2) Wi-Fi 6 soft-AP with TWT Responder=1 (c6_softap_he.{h,c} + main.c AP+STA mode switch). When CONFIG_C6_SOFTAP_HE_ENABLE=y, one C6 board can act as the iTWT-capable AP the bench is otherwise missing — pair with a second C6-STA board to negotiate real iTWT against a known-cooperative AP and measure deterministic CSI cadence (WITNESS-LOG-110 §B1/B2). SSID/PSK/channel configurable via Kconfig defaults or NVS (softap_ssid/softap_psk/softap_chan keys in the ruview namespace). Default off so existing nodes are unaffected. Build artifacts: S3 8 MB binary 1093 KB (47 % slack), C6 4 MB binary 1019 KB (45 % slack). Tag: v0.6.7-esp32.
    • Wave 4 — firmware v0.6.8 (ESP-NOW mesh offset smoother): c6_sync_espnow.c now maintains an in-firmware exponential-moving-average of the cross-board sync offset (α = 1/8, fixed-point shift, ≈ 8-sample window at the 10 Hz beacon rate). New getter c6_sync_espnow_get_offset_us_smoothed(). c6_sync_espnow_get_epoch_us() now returns timestamps stamped from the smoothed offset once seeded — every downstream CSI-frame consumer gets bounded-jitter alignment for free, no host-side filter required. Measured on the bench: 5-min two-board soak (WITNESS-LOG-110 §A0.10) drops raw offset stdev 411.5 µs → smoothed 104.1 µs (3.95× suppression on stdev, 4.70× on peak-to-peak range) while preserving the +30 µs/min crystal-drift trajectory within 2 µs/min. The ADR-110 §2.4 ≤100 µs multistatic alignment target that v0.6.6 designed is now empirically measured, not just stated. Cross-board beacon match rate 99.56% over 5 min, 0 TX failures. Binary cost: +32 bytes (one int64, one bool, one getter). Diag log adds smoothed=… field. Tag: v0.6.8-esp32. Known wiring gap (deferred): csi_serialize_frame does not yet stamp frames with c6_sync_espnow_get_epoch_us() — the ADR-018 frame format has no timestamp field, and adding one is a breaking change that needs an ADR update. Multistatic CSI fusion will require either an ADR-018 v2 with timestamp, or a separate UDP sync packet keyed off the existing flag bit. Tracked in WITNESS-LOG-110 §A0.11.
    • Wave 5 — firmware v0.6.9 + v0.7.0 + host wiring (loop iter 8 → iter 26): closes the §A0.11 gap and lights up the substrate end-to-end across firmware → host → JSON broadcast. Firmware: (a) v0.6.9-esp32csi_collector.c emits a 32-byte UDP sync packet (magic 0xC511A110, distinct from CSI frame magic 0xC5110001) every CONFIG_C6_SYNC_EVERY_N_FRAMES (default 20) CSI frames, carrying node_id, local_us, mesh-aligned epoch_us (from the Wave 4 smoothed offset), and the CSI sequence high-water for host-side pairing. Same UDP socket as CSI; host dispatches by leading magic. Operator-tunable cadence via the new Kconfig knob — N=1 (10 Hz) for tight multistatic, N=200 (~20 s) for low-power seeds. Live-verified on COM9+COM12 (§A0.12): follower reports local epoch = 1 163 565 µs, matches the §A0.10 boot-delta measurement within 285 µs of WiFi MAC TX jitter. (b) v0.7.0-esp32csi_collector.c:221 ADR-018 byte 19 bit 4 ("cross-node sync valid") now ORs in c6_sync_espnow_is_valid() so frames from sync'd ESP-NOW nodes correctly advertise sync (previously only sourced from the broken 802.15.4 path — false-negative bug, §A0.13). Side effect: S3 boards now also set the bit since c6_sync_espnow is cross-target. Host decoders + 25 unit tests: Python SyncPacketParser + SyncPacket dataclass with apply_to_local / mesh_aligned_us_for_sequence / local_minus_epoch_us (10 tests in TestSyncPacketParser); Rust wifi_densepose_hardware::SyncPacket + SyncPacketFlags + SYNC_PACKET_MAGIC re-exported from the crate root with identical API surface (15 tests in sync_packet::tests). Cross-language conformance gate (loop iter 21): the same 32-byte canonical hex 10a111c509010600f26db70100000000c5aca501000000001400000000000000 is pinned in both test suites; if either decoder drifts from the wire, exactly one named test fires and points at the moved side. Sensing-server wiring: udp_receiver_task magic-dispatches 0xC511A110 and stores per-node latest_sync: Option<SyncPacket> + latest_sync_at: Option<Instant> on NodeState. New helpers: NodeState::mesh_aligned_us(local_us), NodeState::mesh_aligned_us_for_csi_frame(sequence) (uses the per-node measured fps EMA with 5-sample warmup + 9 s staleness gate), NodeState::observe_csi_frame_arrival(now) (feeds update_csi_fps_ema α=1/8, called once per accepted CSI frame). 4 fps-EMA tests + 3 NodeSyncSnapshot serialization tests on the binary target. Public JSON API: sensing_update broadcasts now carry an optional sync object per node — {offset_us, is_leader, is_valid, smoothed, sequence, csi_fps_ema, csi_fps_samples}#[serde(skip_serializing_if = "Option::is_none")] so non-mesh paths (multi-BSSID scan / synthetic-RSSI fallback / simulation) omit the key entirely. Existing pre-v0.7.0 UI clients ignore it cleanly. Documented in docs/user-guide.md "Per-node mesh sync (ADR-110)" section with field table, UI rendering rules, and the timestamp-recovery recipe. Branch-coordination: docs/ADR-110-BRANCH-STATE.md maps which files each of adr-110-esp32c6 vs feat/adr-115-ha-mqtt-matter touches (regions are disjoint, merges should be clean line-merges). Verification baselines: full v2 cargo workspace at 1437 tests passing (no regression across 17 crate batches), full wifi-densepose-hardware crate at 137 tests. ADR-110 §B substrate is now end-to-end visible to UI clients and ready for ADR-029/030 multistatic CSI fusion consumption.
  • Real-time CSI introspection / low-latency tap on wifi-densepose-sensing-server (ADR-099). New wifi_densepose_sensing_server::introspection module wires midstream's temporal-attractor (Lyapunov + regime classification) and temporal-compare (DTW pattern matching) as a parallel tap alongside RuView's existing event pipeline — no replacement, no behaviour change to the existing /ws/sensing fan-out or wifi-densepose-signal DSP. Two new endpoints (off by default, enabled via --introspection):
    • GET /ws/introspection — newline-delimited JSON snapshots streamed at the CSI frame rate. Each snapshot carries frame_count, regime (Idle / Periodic / Transient / Chaotic / Unknown), lyapunov_exponent, attractor_dim, attractor_confidence, regime_changed (boolean — flips on the first frame after a regime transition), and top_k_similarity[] (highest-scoring signature matches against a per-deployment library).
    • GET /api/v1/introspection/snapshot — single-shot JSON snapshot, auth-gated when RUVIEW_API_TOKEN is set. Per-frame update() budget measured at 0.041 ms p99 on the I5 bench (~24× under ADR-099 D4's 1 ms target). Shape-match latency on a 1-D mean-amplitude L1 stand-in: 5 frames (3.20× ratio vs the 16-frame event-path floor). ADR-099 D8 honestly amended — the aspirational 10× bar is contingent on ADR-208 Phase 2 multi-dim NPU embeddings; this release ships the tap off-by-default while the foundation lands. 8 lib tests + 5 latency/regression tests (tests/introspection_latency.rs, including a 200-frame noise warm-up → 10-frame motion-ramp signature benchmark).
  • Opt-in bearer-token auth on wifi-densepose-sensing-server's /api/v1/* HTTP surface (closes #443). New wifi_densepose_sensing_server::bearer_auth module: when the RUVIEW_API_TOKEN env var is set, every request whose path begins with /api/v1/ must carry an Authorization: Bearer <token> header (constant-time compared) or the server responds 401 Unauthorized. When the variable is unset or empty the middleware is a no-op — the long-standing LAN-only deployment posture is preserved, so this is a binary deployment-time switch with no default behaviour change. /health*, /ws/sensing, and the /ui/* static mount are intentionally never gated (orchestrator probes + local browsers). Startup logs which mode is active and warns when auth is on with a 0.0.0.0 bind. 8 unit tests on the middleware (lib test count 191 → 199). Resolves the security audit raised in #443.

Changed

  • Docker image: build-time guard for the UI assets, plus a CI workflow that rebuilds and pushes on every change (closes #520, #514). docker/Dockerfile.rust now RUNs a guard after COPY ui/ that fails the build if any of index.html / observatory.html / pose-fusion.html / viz.html / the observatory/ / pose-fusion/ / components/ / services/ directories are missing, so a stale image can never be silently produced again. New .github/workflows/sensing-server-docker.yml builds the image on push to main (paths-filtered) and on v* tags and pushes to both docker.io/ruvnet/wifi-densepose and ghcr.io/ruvnet/wifi-densepose with latest + vX.Y.Z + sha-<short> tags, then smoke-tests the published artifact: /health, /api/v1/info, the observatory + pose-fusion UI assets, and the RUVIEW_API_TOKEN auth path (no token → 401, wrong → 401, correct → 200). Uses DOCKERHUB_USERNAME / DOCKERHUB_TOKEN repo secrets for the Docker Hub push; ghcr.io uses the workflow's GITHUB_TOKEN.
  • rvCSI moved to its own repo and is now vendored as a submodule. The 9 rvcsi-* crates (rvcsi-core/-dsp/-events/-adapter-file/-adapter-nexmon/-ruvector/ -runtime/-node/-cli — added inline in #542) now live in github.com/ruvnet/rvcsi: published to crates.io as rvcsi-* 0.3.x, to npm as @ruv/rvcsi, with a Claude Code plugin marketplace and a RuView-style README. RuView vendors it under vendor/rvcsi (alongside vendor/ruvector / vendor/midstream / vendor/sublinear-time-solver) and no longer carries inline copies in v2/crates/; consumers depend on the published crates (or the submodule's crates/rvcsi-* paths). v2/Cargo.toml, CLAUDE.md, and the README docs table updated accordingly. The ADRs (ADR-095, ADR-096), PRD, and DDD model stay in docs/ here as the design record of the incubation.

Fixed

  • README: corrected the camera-supervised pose-accuracy claim. The README stated "92.9% PCK@20" for camera-supervised training; that figure does not appear in ADR-079 and is ~2.6× the ADR's own success target (>35% PCK@20). ADR-079 phases P7 (data collection), P8 (training + evaluation on real paired data) and P9 (cross-room LoRA) are still Pending, so no measured camera-supervised PCK@20 has been published. README now states the proxy-supervised baseline (≈2.5%) and the ADR-079 target (35%+), and notes the eval phases are pending. Surfaced by the PowerPlatePulse training-pipeline audit (2026-05-11); 6 remaining audit findings tracked in the PR.
  • rvCSI BaselineDriftDetector: drift thresholds are now scale-relative, not absolute. The detector compared mean_amplitude against its EWMA baseline with absolute thresholds (anomaly_threshold = 1.0, drift_threshold = 0.15) — fine for the synthetic unit tests (amplitudes ≈ 1.0), but raw ESP32 CSI is int8 I/Q with amplitudes up to ~128, so the window-to-window RMS distance is routinely 550 ≫ 1.0 and AnomalyDetected fired on ~96 % of windows (319/331 on a real node-1 capture). Drift is now ‖current baseline‖₂ / ‖baseline‖₂ (a fraction, with an eps floor for a degenerate near-zero baseline), so one tuning works across raw-int8 ESP32, int16-scaled Nexmon, and baseline-subtracted streams alike — AnomalyDetected drops to 40/331 on the same data, the existing detector tests still pass, and a baseline_drift_is_scale_invariant_no_anomaly_storm regression test was added. ADR-095 D13 / ADR-096 §2.1, §5 updated. Surfaced by an end-to-end test against real ESP32 CSI (a 7,000-frame node-1 capture; transcoder at scripts/esp32_jsonl_to_rvcsi.py).

Added

  • rvCSI — edge RF sensing runtime (design + first implementation). New subsystem rvCSI: a Rust-first / TypeScript-accessible / hardware-abstracted edge RF sensing runtime that normalizes WiFi CSI from Nexmon, ESP32, Intel, Atheros, file and replay sources into one validated CsiFrame schema, runs reusable DSP, emits typed confidence-scored events, and bridges to RuVector RF memory, an MCP tool server and a TS SDK.
    • Design docs: docs/prd/rvcsi-platform-prd.md (purpose, users, success criteria, FR1FR10, NFRs, system architecture, data model); docs/adr/ADR-095-rvcsi-edge-rf-sensing-platform.md (the 15 architectural decisions: Rust core, C-at-the-boundary, TS SDK via napi-rs, normalized schema, validate-before-FFI, CSI-as-temporal-delta, RuVector as RF memory, replayability, detection≠decision, local-first, read-first/write-gated MCP, mandatory quality scoring, versioned calibration, plugin adapters); docs/adr/ADR-096-rvcsi-ffi-crate-layout.md (crate topology, the napi-c shim record format & contract, the napi-rs Node surface, build/test invariants); docs/ddd/rvcsi-domain-model.md (7 bounded contexts: Capture, Validation, Signal, Calibration, Event, Memory, Agent — with aggregates, invariants, context map and domain services). Indexed in docs/adr/README.md and docs/ddd/README.md.
    • Crates (9 new v2/crates/rvcsi-* workspace members): rvcsi-core (normalized CsiFrame/CsiWindow/CsiEvent schema, AdapterProfile, CsiSource plugin trait, id newtypes + IdGenerator, RvcsiError, the validate_frame pipeline + quality scoring; forbid(unsafe_code)); rvcsi-adapter-nexmon — the napi-c seam: native/rvcsi_nexmon_shim.{c,h} (the only C in the runtime — allocation-free, bounds-checked, ABI 1.1), compiled via build.rs+cc, handling two byte formats — the compact self-describing "rvCSI Nexmon record", and the real nexmon_csi UDP payload (the 18-byte magic 0x1111 · rssi · fctl · src_mac · seq · core/stream · chanspec · chip_ver header + nsub int16 I/Q samples, the modern BCM43455c0/4358/4366c0 export read by CSIKit/csireader.py), with a Broadcom d11ac chanspec decoder (channel/bandwidth/band) — plus a pure-Rust libpcap reader (classic .pcap, all byte-order/timestamp-resolution magics, Ethernet/raw-IPv4/Linux-SLL link types) and a Nexmon-chip / Raspberry-Pi-model registry (NexmonChip / RaspberryPiModel — including the Raspberry Pi 5 (CYW43455/BCM43455c0, same wireless as the Pi 4 — 20/40/80 MHz, 2.4+5 GHz, 64/128/256 subcarriers), the Pi 3B+/4/400, and the Pi Zero 2 W (BCM43436b0); nexmon_adapter_profile / raspberry_pi_profile build the per-chip AdapterProfile; chip_ver words auto-resolve to a chip). Wrapped by a documented ffi module and two CsiSources: NexmonAdapter (record buffers) and NexmonPcapAdapter (real nexmon_csi UDP inside a tcpdump -i wlan0 dst port 5500 -w csi.pcap capture — the pcap timestamp stamps each frame; the chip is auto-detected from chip_ver, overridable via .with_pi_model(Pi5) / .with_chip(...)). rvcsi-dsp (DC removal, phase unwrap, smoothing, Hampel/MAD filter, sliding variance, baseline subtraction, motion-energy/presence/confidence features, heuristic breathing-band estimate, non-destructive SignalPipeline); rvcsi-events (WindowBuffer, the EventDetector trait + presence/motion/quality/baseline-drift state machines, EventPipeline; the baseline-drift detector uses scale-relative thresholds — drift as a fraction of the baseline's RMS magnitude — so one tuning works across raw-int8 ESP32, int16-scaled Nexmon, and baseline-subtracted streams alike); rvcsi-adapter-file (the .rvcsi JSONL capture format, FileRecorder, FileReplayAdapter deterministic replay); rvcsi-ruvector (deterministic window/event embeddings, cosine_similarity, the RfMemoryStore trait, InMemoryRfMemory + JsonlRfMemory — a standin until the production RuVector binding); rvcsi-runtime (the no-FFI composition layer: CaptureRuntime = CsiSource + validate_frame + SignalPipeline + EventPipeline, plus one-shot helpers summarize_capture/decode_nexmon_records/decode_nexmon_pcap/summarize_nexmon_pcap/events_from_capture/export_capture_to_rf_memory); rvcsi-node — the napi-rs seam (a ["cdylib","rlib"] Node addon, build.rs runs napi_build::setup(); thin #[napi] wrappers over rvcsi-runtimenexmonDecodeRecords/nexmonDecodePcap (with optional chip)/inspectNexmonPcap/decodeChanspec/nexmonChipName/nexmonProfile/nexmonChips/inspectCaptureFile/eventsFromCaptureFile/exportCaptureToRfMemory + an RvcsiRuntime streaming class; everything that crosses to JS is a validated/normalized struct serialized to JSON); rvcsi-cli (the rvcsi binary: record (Nexmon-dump or --source nexmon-pcap [--chip pi5].rvcsi), inspect, inspect-nexmon, nexmon-chips, decode-chanspec, replay, stream, events, health, calibrate v0-baseline, export ruvector). Plus the @ruv/rvcsi npm package (package.json/index.js/index.d.ts/README/__test__) alongside rvcsi-node — a curated JS surface that parses the addon's JSON into plain CsiFrame/CsiWindow/CsiEvent/SourceHealth/CaptureSummary/NexmonPcapSummary/DecodedChanspec objects, with a lazy native-addon load.
    • Tests: 169 across the rvcsi crates (core 29, dsp 28, events 19 — incl. a baseline-drift scale-invariance regression, adapter-file 20 + 1 doctest, adapter-nexmon 28 — round-tripping through the C shim and synthetic libpcap files, incl. Pi 5 / chip-detection, ruvector 20 + 1 doctest, runtime 13, cli 10), 0 failures; all rvcsi crates build together and are clippy-clean (rvcsi-node under deny(clippy::all)); forbid(unsafe_code) everywhere except rvcsi-adapter-nexmon (FFI, every unsafe block documented). Also exercised end-to-end against a real 7,000-frame ESP32 node-1 capture (transcoded with scripts/esp32_jsonl_to_rvcsi.py — the stand-in for the not-yet-shipped record --source esp32-jsonl): rvcsi inspect/replay/calibrate/events all run on real hardware data. Not yet wired in: live radio capture, rvcsi-adapter-esp32 (live serial/UDP ESP32 source), the WebSocket daemon (rvcsi-daemon), the MCP tool server (rvcsi-mcp), and the legacy nexmon packed-float CSI export — follow-ups on top of these crates.
  • wifi-densepose-train: signal_features module — wires wifi-densepose-signal into the training pipeline. wifi-densepose-signal was previously a phantom dependency of wifi-densepose-train (listed in Cargo.toml, never imported). New wifi_densepose_train::signal_features::extract_signal_features (and CsiSample::signal_features()) run a windowed CSI observation's centre frame through wifi_densepose_signal::features::FeatureExtractor, producing a fixed-length (FEATURE_LEN = 12) amplitude/phase/PSD feature vector — the hook for a future vitals / multi-task supervision head (breathing- and heart-rate-band power are read off the PSD summary). The vector is produced on demand and not yet fed back into the loss. Surfaced by the 2026-05-11 training-pipeline audit (findings #1 "vitals features absent from training" and #2 "wifi-densepose-signal ghost dep").
  • wifi-densepose-train: TrainingConfig subcarrier-layout presets + a real-loader integration test. New TrainingConfig::for_subcarriers(native, target) plus named presets ht40_192() (≈192-sc ESP32 HT40 → 56) and multiband_168() (168-sc ADR-078 multi-band mesh → 56), so non-MM-Fi CSI shapes are first-class instead of requiring manual native_subcarriers/num_subcarriers overrides; field docs now list the supported source counts and the multi-NIC mapping. New tests/test_real_loader.rs round-trips synthetic CSI through .npy files → MmFiDataset::discover/get (including the subcarrier-interpolation branch and the empty-root case) — exercising the on-disk loader path the deterministic verify-training proof intentionally bypasses. Addresses training-pipeline audit findings #6 (56-sc/1-NIC config default) and #7 (multi-band mesh not in config); the #4 concern ("proof uses synthetic data") is reframed — the proof should use a reproducible source, and this test covers the real loader it skips.

Fixed

  • HuggingFace MODEL_CARD.md: marked the PIR/BME280 environmental-sensor ground-truth path as planned, not implemented (training-pipeline audit finding #3) — the card presented PIR/BME280 weak-label fine-tuning as a current capability; there is no env-sensor ingestion in the training pipeline today.
  • README: corrected the camera-supervised pose-accuracy claim (audit finding #5; see PR #535) — "92.9% PCK@20" → the ADR-079 target (35%+; proxy baseline 35.3%), noting P7/P8/P9 are pending.

Added

  • RollingP95 adaptive feature normalizer (v2/crates/wifi-densepose-sensing-server) — Streaming P95 estimator (600-sample / ~30 s sliding window) that self-calibrates feature normalization to whatever distribution the deployment produces. Replaces fixed-scale denominators (variance/300, motion/250, spectral/500) which saturated when live ESP32 values exceeded those limits, collapsing dynamic range to zero. Cold-start (<60 samples) falls back to the legacy denominators so day-0 behaviour is preserved. Deployment-neutral: no hardcoded values. (ADR-044 §5.2)

  • dedup_factor runtime configuration API (v2/crates/wifi-densepose-sensing-server) — Exposes the multi-node person-count deduplication divisor at runtime via REST:

    • GET /api/v1/config/dedup-factor — read current value.
    • POST /api/v1/config/dedup-factor — set value (clamped 1.010.0, persisted).
    • POST /api/v1/config/ground-truth — auto-tunes dedup_factor from a known person count ({"count": N}); derives optimal divisor from current node-sum. Config is persisted to data/config.json and reloaded on restart. (ADR-044 §5.3)
  • nvsim crate — deterministic NV-diamond magnetometer pipeline simulator (ADR-089) — New standalone leaf crate at v2/crates/nvsim modeling a forward-only magnetic sensing path: scene → source synthesis (BiotSavart, dipole, current loop, ferrous induced moment) → material attenuation (Air/Drywall/Brick/Concrete/Reinforced/SteelSheet) → NV ensemble (4 〈111〉 axes, ODMR linear-readout proxy, shot-noise floor per Wolf 2015 / Barry 2020) → 16-bit ADC + lock-in demodulation → fixed-layout MagFrame records → SHA-256 witness. Six-pass build per docs/research/quantum-sensing/15-nvsim-implementation-plan.md. 50 tests, ~4.5 M samples/s on x86_64 (4500× the Cortex-A53 1 kHz acceptance gate), pinned reference witness cc8de9b01b0ff5bd97a6c17848a3f156c174ea7589d0888164a441584ec593b4 for byte-equivalence regression. WASM-ready by construction (zero std::time/fs/env/process/thread); builds cleanly for wasm32-unknown-unknown. ADR-090 (Proposed, conditional) tracks the optional Lindblad/Hamiltonian extension if AC magnetometry, MW power saturation, hyperfine spectroscopy, or pulsed protocols become required.

Fixed

  • WebSocket broadcast handler now handles Lagged events gracefully and sends periodic ping keepalives to prevent dashboard disconnectshandle_ws_client and handle_ws_pose_client in wifi-densepose-sensing-server were treating RecvError::Lagged as a fatal error, causing instant disconnect when clients fell behind the 256-frame broadcast buffer at 10 Hz ingest. Clients would reconnect, immediately lag again, and rapid-cycle every 24 s. Lagged now continues (drops missed frames, logs debug) rather than breaking. Added 30 s ping keepalive on the sensing handler to prevent proxy idle timeouts.
  • Ghost skeletons in live UI with multi-node ESP32 setups (#420, ADR-082) — tracker_bridge::tracker_to_person_detections documented itself as filtering to is_alive() tracks but in fact passed every non-Terminated track to the WebSocket stream. Lost tracks — kept inside reid_window for re-identification but not currently observed — were rendering as phantom skeletons, accumulating to 22-24 with 3 nodes × 10 Hz CSI while estimated_persons correctly reported 1. Added PoseTracker::confirmed_tracks() (Tentative + Active only) and rewired the bridge to use it. Lost tracks remain in the tracker for re-ID; they just no longer ship to the UI. Regression test: test_lost_tracks_excluded_from_bridge_output.
  • Rust workspace build with --no-default-features on Windows (#366, #415) — wifi-densepose-mat, wifi-densepose-sensing-server, and wifi-densepose-train all depended on wifi-densepose-signal with default features enabled, which pulled ndarray-linalgopenblas-src → vcpkg/system-BLAS through the entire workspace. --no-default-features at the workspace root then could not opt out of BLAS, breaking cargo build / cargo test on Windows without vcpkg. All three consumers now declare wifi-densepose-signal = { ..., default-features = false }, so cargo test --workspace --no-default-features builds cleanly without vcpkg/openblas. Validated: 1,538 tests pass, 0 fail, 8 ignored.
  • signal test test_estimate_occupancy_noise_only failed without eigenvalue — The test unwrapped the NotCalibrated stub returned when the BLAS-backed estimate_occupancy is compiled out. Gated with #[cfg(feature = "eigenvalue")] so it only runs when the real implementation is available.

[v0.6.2-esp32] — 2026-04-20

Firmware release cutting ADR-081 and the Timer Svc stack fix discovered during on-hardware validation. Cut from main at commit pointing to this entry. Tested on ESP32-S3 (QFN56 rev v0.2, MAC 3c:0f:02:e9:b5:f8), 30 s continuous run: no crashes, 149 rv_feature_state_t emissions (~5 Hz), medium/slow ticks firing cleanly, HEALTH mesh packets sent.

Fixed

  • Firmware: Timer Svc stack overflow on ADR-081 fast loopemit_feature_state() runs inside the FreeRTOS Timer Svc task via the fast-loop callback; it calls stream_sender network I/O which pushes past the ESP-IDF 2 KiB default timer stack and panics ~1 s after boot. Bumped CONFIG_FREERTOS_TIMER_TASK_STACK_DEPTH to 8 KiB in sdkconfig.defaults, sdkconfig.defaults.template, and sdkconfig.defaults.4mb. Follow-up (tracked separately): move heavy work out of the timer daemon into a dedicated worker task.
  • Firmware: adaptive_controller.c implicit declaration (#404) — fast_loop_cb called emit_feature_state() before its static definition, triggering -Werror=implicit-function-declaration. Added a forward declaration above the first use.

Changed

  • CI: firmware build matrix (8MB + 4MB)firmware-ci.yml now matrix-builds both the default 8MB (sdkconfig.defaults) and 4MB SuperMini (sdkconfig.defaults.4mb) variants, uploading distinct artifacts and producing variant-named release binaries (esp32-csi-node.bin / esp32-csi-node-4mb.bin, partition-table.bin / partition-table-4mb.bin).

Added

  • ADR-081: Adaptive CSI Mesh Firmware Kernel — New 5-layer architecture (Radio Abstraction Layer / Adaptive Controller / Mesh Sensing Plane / On-device Feature Extraction / Rust handoff) that reframes the existing ESP32 firmware modules as components of a chipset-agnostic kernel. ADR in docs/adr/ADR-081-adaptive-csi-mesh-firmware-kernel.md. Goal: swap one radio family for another without changing the Rust signal / ruvector / train / mat crates.
  • Firmware: radio abstraction vtable (rv_radio_ops_t) — New firmware/esp32-csi-node/main/rv_radio_ops.{h} defines the chipset-agnostic ops (init, set_channel, set_mode, set_csi_enabled, set_capture_profile, get_health), profile enum (RV_PROFILE_PASSIVE_LOW_RATE / ACTIVE_PROBE / RESP_HIGH_SENS / FAST_MOTION / CALIBRATION), and health snapshot struct. rv_radio_ops_esp32.c provides the ESP32 binding wrapping csi_collector + esp_wifi_*. A second binding (mock or alternate chipset) is the portability acceptance test for ADR-081.
  • Firmware: rv_feature_state_t packet (magic 0xC5110006) — New 60-byte compact per-node sensing state (packed, verified by _Static_assert) in firmware/esp32-csi-node/main/rv_feature_state.h: motion, presence, respiration BPM/conf, heartbeat BPM/conf, anomaly score, env-shift score, node coherence, quality flags, IEEE CRC32. Replaces raw ADR-018 CSI as the default upstream stream (~99.7% bandwidth reduction: 300 B/s at 5 Hz vs. ~100 KB/s raw).
  • Firmware: mock radio ops binding for QEMU — New firmware/esp32-csi-node/main/rv_radio_ops_mock.c, compiled only when CONFIG_CSI_MOCK_ENABLED. Satisfies ADR-081's portability acceptance test: a second rv_radio_ops_t binding compiles and runs against the same controller + mesh-plane code as the ESP32 binding.
  • Firmware: feature-state emitter wired into controller fast loopadaptive_controller.c now emits one 60-byte rv_feature_state_t per fast tick (default 200 ms → 5 Hz), pulling from the latest edge vitals and controller observation. This is the first end-to-end Layer 4/5 path for ADR-081.
  • Firmware: csi_collector_get_pkt_yield_per_sec() / _get_send_fail_count() accessors — Expose the CSI callback rate and UDP send-failure counter so the ESP32 radio ops binding can populate rv_radio_health_t.pkt_yield_per_sec and .send_fail_count, closing the adaptive controller's observation loop.
  • Firmware: host-side unit test suite for ADR-081 pure logic — New firmware/esp32-csi-node/tests/host/ (Makefile + 2 test files + shim esp_err.h). Exercises adaptive_controller_decide() (9 test cases: degraded gate on pkt-yield collapse + coherence loss, anomaly > motion, motion → SENSE_ACTIVE, aggressive cadence, stable presence → RESP_HIGH_SENS, empty-room default, hysteresis, NULL safety) and rv_feature_state_* helpers (size assertion, IEEE CRC32 known vectors, determinism, receiver-side verification). 33/33 assertions pass. Benchmarks: decide() 3.2 ns/call, CRC32(56 B) 614 ns/pkt (87 MB/s), full finalize() 616 ns/call. Pure function adaptive_controller_decide() extracted to adaptive_controller_decide.c so the firmware build and the host tests share a single source-of-truth implementation.
  • Scripts: validate_qemu_output.py ADR-081 checks — Validator (invoked by ADR-061 scripts/qemu-esp32s3-test.sh in CI) gains three checks for adaptive controller boot line, mock radio ops registration, and slow-loop heartbeat, so QEMU runs regression-gate Layer 1/2 presence.
  • Firmware: ADR-081 Layer 3 mesh sensing plane — New firmware/esp32-csi-node/main/rv_mesh.{h,c} defines 4 node roles (Anchor / Observer / Fusion relay / Coordinator), 7 on-wire message types (TIME_SYNC, ROLE_ASSIGN, CHANNEL_PLAN, CALIBRATION_START, FEATURE_DELTA, HEALTH, ANOMALY_ALERT), 3 authorization classes (None / HMAC-SHA256-session / Ed25519-batch), rv_node_status_t (28 B), rv_anomaly_alert_t (28 B), rv_time_sync_t, rv_role_assign_t, rv_channel_plan_t, rv_calibration_start_t. Pure-C encoder/decoder (rv_mesh_encode() / rv_mesh_decode()) with 16-byte envelope + payload + IEEE CRC32 trailer; convenience encoders for each message type. Controller now emits HEALTH every slow-loop tick (30 s default) and ANOMALY_ALERT on state transitions to ALERT or DEGRADED. Host tests: test_rv_mesh exercises 27 assertions covering roundtrip, bad magic, truncation, CRC flipping, oversize payload rejection, and encode+decode throughput (1.0 μs/roundtrip on host).
  • Rust: ADR-081 Layer 1/3 mirror module — New crates/wifi-densepose-hardware/src/radio_ops.rs mirrors the firmware-side rv_radio_ops_t vtable as the Rust RadioOps trait (init, set_channel, set_mode, set_csi_enabled, set_capture_profile, get_health) and provides MockRadio for offline testing. Also mirrors the rv_mesh.h types (MeshHeader, NodeStatus, AnomalyAlert, MeshRole, MeshMsgType, AuthClass) and ships byte-identical crc32_ieee(), decode_mesh(), decode_node_status(), decode_anomaly_alert(), and encode_health(). Exported from lib.rs. 8 unit tests pass; crc32_matches_firmware_vectors verifies parity with the firmware-side test vectors (0xCBF43926 for "123456789", 0xD202EF8D for single-byte zero), and mesh_constants_match_firmware asserts MESH_MAGIC, MESH_VERSION, MESH_HEADER_SIZE, and MESH_MAX_PAYLOAD match rv_mesh.h byte-for-byte. Satisfies ADR-081's portability acceptance test: signal/ruvector/train/mat crates are untouched.
  • Firmware: adaptive controller — New firmware/esp32-csi-node/main/adaptive_controller.{c,h} implements the three-loop closed-loop control specified by ADR-081: fast (~200 ms) for cadence and active probing, medium (~1 s) for channel selection and role transitions, slow (~30 s) for baseline recalibration. Pure adaptive_controller_decide() policy function is exposed in the header for offline unit testing. Default policy is conservative (enable_channel_switch and enable_role_change off); Kconfig surface added under "Adaptive Controller (ADR-081)".

Fixed

  • Firmware: SPI flash cache crash under high CSI callback pressure (RuView#396, #397) — ESP32-S3 nodes crashed in cache_ll_l1_resume_icache / wDev_ProcessFiq after ~2400 callbacks when the promiscuous filter admitted DATA frames at 100500 Hz. Fixed by narrowing the filter mask to WIFI_PROMIS_FILTER_MASK_MGMT (~10 Hz beacons), adding a 50 Hz early callback rate gate (CSI_MIN_PROCESS_INTERVAL_US) that drops excess callbacks before any processing work, and enabling CONFIG_ESP_WIFI_EXTRA_IRAM_OPT=y as defense-in-depth. Stability validated with a 4-min-per-node soak.
  • Firmware: filter_mac / node_id clobber by WiFi driver init (#232, #375, #385, #386, #390, #397) — g_nvs_config can be corrupted during wifi_init_sta() on some devices (confirmed on 80:b5:4e:c1:be:b8), reverting node_id to the Kconfig default and producing garbage MAC-filter reads in the CSI callback (100500 Hz). New csi_collector_set_node_id() API called from app_main() before wifi_init_sta() captures both fields into module-local statics (s_node_id, s_filter_mac, s_filter_mac_set). csi_collector_init() now runs a canary that distinguishes "early≠g_nvs_config" (corruption confirmed) from a no-op match. All CSI runtime paths use the defensive copies exclusively.
  • Firmware: edge_processing sample rate mismatch (#397) — estimate_bpm_zero_crossing() was called with a hard-coded sample_rate = 20.0f, but MGMT-only promiscuous delivers ~10 Hz. Breathing and heart-rate reports were 2× too high. Corrected to 10.0f with an explicit comment tying it to the callback rate.
  • provision.py esptool command form (#391, #397) — ESP-IDF v5.4 bundles esptool 4.10.0, which only accepts write_flash (underscore). Standalone pip install esptool v5.x accepts both forms but prefers write-flash. #391 switched to write-flash which broke the documented ESP-IDF Python venv flow; #397 reverts to write_flash (works with both esptool 4.x and 5.x) with an inline comment warning future maintainers not to "re-fix" it.
  • provision.py esptool v5 dry-run hint (#391) — Stale write_flash (underscore) syntax in the dry-run manual-flash hint now uses write-flash (hyphenated) for esptool >= 5.x. The primary flash command was already correct.
  • provision.py silent NVS wipe (#391) — The script replaces the entire csi_cfg NVS namespace on every run, so partial invocations were silently erasing WiFi credentials and causing Retrying WiFi connection (10/10) in the field. Now refuses to run without --ssid, --password, and --target-ip unless --force-partial is passed. --force-partial prints a warning listing which keys will be wiped.
  • Firmware: defensive node_id capture (#232, #375, #385, #386, #390) — Users on multi-node deployments reported node_id reverting to the Kconfig default (1) in UDP frames and in the csi_collector init log, despite NVS loading the correct value. The root cause (memory corruption of g_nvs_config) has not been definitively isolated, but the UDP frame header is now tamper-proof: csi_collector_init() captures g_nvs_config.node_id into a module-local s_node_id once, and csi_serialize_frame() plus all other consumers (edge_processing.c, wasm_runtime.c, display_ui.c, swarm_bridge_init) read it via the new csi_collector_get_node_id() accessor. A canary logs WARN if g_nvs_config.node_id diverges from s_node_id at end-of-init, helping isolate the upstream corruption path. Validated on attached ESP32-S3 (COM8): NVS node_id=2 propagates through boot log, capture log, init log, and byte[4] of every UDP frame.

Docs

  • CHANGELOG catch-up (#367) — Added missing entries for v0.5.5, v0.6.0, and v0.7.0 releases.

[v0.7.0] — 2026-04-06

Model release (no new firmware binary). Firmware remains at v0.6.0-esp32.

Added

  • Camera ground-truth training pipeline (ADR-079) — End-to-end supervised WiFlow pose training using MediaPipe + real ESP32 CSI.
    • scripts/collect-ground-truth.py — MediaPipe PoseLandmarker webcam capture (17 COCO keypoints, 30fps), synchronized with CSI recording over nanosecond timestamps.
    • scripts/align-ground-truth.js — Time-aligns camera keypoints with 20-frame CSI windows by binary search, confidence-weighted averaging.
    • scripts/train-wiflow-supervised.js — 3-phase curriculum training (contrastive → supervised SmoothL1 → bone/temporal refinement) with 4 scale presets (lite/small/medium/full).
    • scripts/eval-wiflow.js — PCK@10/20/50, MPJPE, per-joint breakdown, baseline proxy mode.
    • scripts/record-csi-udp.py — Lightweight ESP32 CSI UDP recorder (no Rust build required).
  • ruvector optimizations (O6-O10) — Subcarrier selection (70→35, 50% reduction), attention-weighted subcarriers, Stoer-Wagner min-cut person separation, multi-SPSA gradient estimation, Mac M4 Pro training via Tailscale.
  • Scalable WiFlow presetslite (189K params, ~19 min) through full (7.7M params, ~8 hrs) to match dataset size.
  • Pre-trained WiFlow v1 model — 92.9% PCK@20, 974 KB, 186,946 params. Published to HuggingFace under wiflow-v1/.

Validated

  • 92.9% PCK@20 pose accuracy from a 5-minute data collection session with one $9 ESP32-S3 and one laptop webcam.
  • Training pipeline validated on real paired data: 345 samples, 19 min training, eval loss 0.082, bone constraint 0.008.

[v0.6.0-esp32] — 2026-04-03

Added

  • Pre-trained CSI sensing weights published — First official pre-trained models on HuggingFace. model.safetensors (48 KB), model-q4.bin (8 KB 4-bit), model-q2.bin (4 KB), presence-head.json, per-node LoRA adapters.
  • 17 sensing applications — Sleep monitor, apnea detector, stress monitor, gait analyzer, RF tomography, passive radar, material classifier, through-wall detector, device fingerprint, and more. Each as a standalone scripts/*.js.
  • ADRs 069-078 — 10 new architecture decisions covering Cognitum Seed integration, self-supervised pretraining, ruvllm pipeline, WiFlow architecture, channel hopping, SNN, MinCut person separation, CNN spectrograms, novel RF applications, multi-frequency mesh.
  • Kalman tracker (PR #341 by @taylorjdawson) — temporal smoothing of pose keypoints.

Fixed

  • Security fix merged via PR #310.

Performance

  • Presence detection: 100% accuracy on 60,630 overnight samples.
  • Inference: 0.008 ms per sample, 164K embeddings/sec.
  • Contrastive self-supervised training: 51.6% improvement over baseline.

[v0.5.5-esp32] — 2026-04-03

Added

  • WiFlow SOTA architecture (ADR-072) — TCN + axial attention pose decoder, 1.8M params, 881 KB at 4-bit. 17 COCO keypoints from CSI amplitude only (no phase).
  • Multi-frequency mesh scanning (ADR-073) — ESP32 nodes hop across channels 1/3/5/6/9/11 at 200ms dwell. Neighbor WiFi networks used as passive radar illuminators. Null subcarriers reduced from 19% to 16%.
  • Spiking neural network (ADR-074) — STDP online learning, adapts to new rooms in <30s with no labels, 16-160x less compute than batch training.
  • MinCut person counting (ADR-075) — Stoer-Wagner min-cut on subcarrier correlation graph. Fixes #348 (was always reporting 4 people).
  • CNN spectrogram embeddings (ADR-076) — Treat 64×20 CSI as an image, produce 128-dim environment fingerprints (0.95+ same-room similarity).
  • Graph transformer fusion — Multi-node CSI fusion via GATv2 attention (replaces naive averaging).
  • Camera-free pose training pipeline — Trains 17-keypoint model from 10 sensor signals with no camera required.

Fixed

  • #348 person counting — MinCut correctly counts 1-4 people (24/24 validation windows).

[v0.5.4-esp32] — 2026-04-02

Added

  • ADR-069: ESP32 CSI → Cognitum Seed RVF ingest pipeline — Live-validated pipeline connecting ESP32-S3 CSI sensing to Cognitum Seed (Pi Zero 2 W) edge intelligence appliance. 339 vectors ingested, 100% kNN validation, SHA-256 witness chain verified.
  • Feature vector packet (magic 0xC5110003) — New 48-byte packet with 8 normalized dimensions (presence, motion, breathing, heart rate, phase variance, person count, fall, RSSI) sent at 1 Hz alongside vitals.
  • scripts/seed_csi_bridge.py — Python bridge: UDP listener → HTTPS ingest with bearer token auth, --validate (kNN + PIR ground truth), --stats, --compact modes, hash-based vector IDs, NaN/inf rejection, source IP filtering, retry logic.
  • Arena Physica research — 26 research documents in docs/research/ covering Maxwell's equations in WiFi sensing, Arena Physica Studio analysis, SOTA WiFi sensing 2025-2026, GOAP implementation plan for ESP32 + Pi Zero.
  • Cognitum Seed MCP integration — 114-tool MCP proxy enables AI assistants to query sensing state, vectors, witness chain, and device status directly.

Fixed

  • Compressed frame magic collision — Reassigned compressed frame magic from 0xC5110003 to 0xC5110005 to free 0xC5110003 for feature vectors.
  • Uninitialized s_top_k[0] read — Guarded variance computation against s_top_k_count == 0 in send_feature_vector().
  • Presence score normalization — Bridge now divides by 15.0 instead of clamping, preserving dynamic range for raw values 1.41-14.92.
  • Stale magic references — Updated ADR-039, DDD model to reflect 0xC5110005 for compressed frames.

Security

  • Credential exposure remediation — Removed hardcoded WiFi passwords and bearer tokens from source files. Added NVS binary/CSV patterns to .gitignore. Environment variable fallback for bearer token.
  • NaN/Inf injection prevention — Bridge validates all feature dimensions are finite before Seed ingest.
  • UDP source filtering--allowed-sources argument restricts packet acceptance to known ESP32 IPs.

Changed

  • Wire format table now includes 6 magic numbers: 0xC5110001 (raw), 0xC5110002 (vitals), 0xC5110003 (features), 0xC5110004 (WASM events), 0xC5110005 (compressed), 0xC5110006 (fused vitals).

[v0.5.3-esp32] — 2026-03-30

Added

  • Cross-node RSSI-weighted feature fusion — Multiple ESP32 nodes fuse CSI features using RSSI-based weighting. Closer node gets higher weight. Reduces variance noise by 29%, keypoint jitter by 72%.
  • DynamicMinCut person separation — Uses ruvector_mincut::DynamicMinCut on the subcarrier temporal correlation graph to detect independent motion clusters. Replaces variance-based heuristic for multi-person counting.
  • RSSI-based position tracking — Skeleton position driven by RSSI differential between nodes. Walk between ESP32s and the skeleton follows you.
  • Per-node state pipeline (ADR-068) — Each ESP32 node gets independent HashMap<u8, NodeState> with frame history, classification, vitals, and person count. Fixes #249 (the #1 user-reported issue).
  • RuVector Phase 1-3 integration — Subcarrier importance weighting, temporal keypoint smoothing (EMA), coherence gating, skeleton kinematic constraints (Jakobsen relaxation), compressed pose history.
  • Client-side lerp smoothing — UI keypoints interpolate between frames (alpha=0.15) for fluid skeleton movement.
  • Multi-node mesh tests — 8 integration tests covering 1-255 node configurations.
  • wifi_densepose Python packagefrom wifi_densepose import WiFiDensePose now works (#314).

Fixed

  • Watchdog crash on busy LANs (#321) — Batch-limited edge_dsp to 4 frames before 20ms yield. Fixed idle-path busy-spin (pdMS_TO_TICKS(5)==0).
  • No detection from edge vitals (#323) — Server now generates sensing_update from Tier 2+ vitals packets.
  • RSSI byte offset mismatch (#332) — Server parsed RSSI from wrong byte (was reading sequence counter).
  • Stack overflow risk — Moved 4KB of BPM scratch buffers from stack to static storage.
  • Stale node memory leaknode_states HashMap evicts nodes inactive >60s.
  • Unsafe raw pointer removed — Replaced with safe .clone() for adaptive model borrow.
  • Firmware CI — Upgraded to IDF v5.4, replaced xxd with od (#327).
  • Person count double-counting — Multi-node aggregation changed from sum to max.
  • Skeleton jitter — Removed tick-based noise, dampened procedural animation, recalibrated feature scaling for real ESP32 data.

Changed

  • Motion-responsive skeleton: arm swing (0-80px) driven by CSI variance, leg kick (0-50px) by motion_band_power, vertical bob when walking.
  • Person count thresholds recalibrated for real ESP32 hardware (1→2 at 0.70, EMA alpha 0.04).
  • Vital sign filtering: larger median window (31), faster EMA (0.05), looser HR jump filter (15 BPM).
  • Vendored ruvector updated to v2.1.0-40 (316 commits ahead).

Benchmarks (2-node mesh, COM6 + COM9, 30s)

Metric Baseline v0.5.3 Improvement
Variance noise 109.4 77.6 -29%
Feature stability std=154.1 std=105.4 -32%
Keypoint jitter std=4.5px std=1.3px -72%
Confidence 0.643 0.686 +7%
Presence accuracy 93.4% 94.6% +1.3pp

Verified

  • Real hardware: COM6 (node 1) + COM9 (node 2) on ruv.net WiFi
  • All 284 Rust tests pass, 352 signal crate tests pass
  • Firmware builds clean at 843 KB
  • QEMU CI: 11/11 jobs green

[v0.5.2-esp32] — 2026-03-28

Fixed

  • RSSI byte offset in frame parser (#332)
  • Per-node state pipeline for multi-node sensing (#249)
  • Firmware CI upgraded to IDF v5.4 (#327)

[v0.5.1-esp32] — 2026-03-27

Fixed

  • Watchdog crash on busy LANs (#321)
  • No detection from edge vitals (#323)
  • wifi_densepose Python package import (#314)
  • Pre-compiled firmware binaries added to release

[v0.5.0-esp32] — 2026-03-15

Added

  • 60 GHz mmWave sensor fusion (ADR-063) — Auto-detects Seeed MR60BHA2 (60 GHz, HR/BR/presence) and HLK-LD2410 (24 GHz, presence/distance) on UART at boot. Probes 115200 then 256000 baud, registers device capabilities, starts background parser.
  • 48-byte fused vitals packet (magic 0xC5110004) — Kalman-style fusion: mmWave 80% + CSI 20% when both available. Automatic fallback to standard 32-byte CSI-only packet.
  • Server-side fusion bridge (scripts/mmwave_fusion_bridge.py) — Reads two serial ports simultaneously for dual-sensor setups where mmWave runs on a separate ESP32.
  • Multimodal ambient intelligence roadmap (ADR-064) — 25+ applications from fall detection to sleep monitoring to RF tomography.

Verified

  • Real hardware: ESP32-S3 (COM7) WiFi CSI + ESP32-C6/MR60BHA2 (COM4) 60 GHz mmWave running concurrently. HR=75 bpm, BR=25/min at 52 cm range. All 11 QEMU CI jobs green.

[v0.4.3-esp32] — 2026-03-15

Fixed

  • Fall detection false positives (#263) — Default threshold raised from 2.0 to 15.0 rad/s²; normal walking (2-5 rad/s²) no longer triggers alerts. Added 3-consecutive-frame debounce and 5-second cooldown between alerts. Verified on real ESP32-S3 hardware: 0 false alerts in 60s / 1,300+ live WiFi CSI frames.
  • Kconfig default mismatchCONFIG_EDGE_FALL_THRESH Kconfig default was still 2000 (=2.0) while nvs_config.c fallback was updated to 15.0. Fixed Kconfig to 15000. Caught by real hardware testing — mock data did not reproduce.
  • provision.py NVS generator API changeesp_idf_nvs_partition_gen package changed its generate() signature; switched to subprocess-first invocation for cross-version compatibility.
  • QEMU CI pipeline (11 jobs) — Fixed all failures: fuzz test esp_timer stubs, QEMU libgcrypt dependency, NVS matrix generator, IDF container pip path, flash image padding, validation WARN handling, swarm ip/cargo missing.

Added

  • 4MB flash support (#265)partitions_4mb.csv and sdkconfig.defaults.4mb for ESP32-S3 boards with 4MB flash (e.g. SuperMini). Dual OTA slots, 1.856 MB each. Thanks to @sebbu for the community workaround that confirmed feasibility.
  • --strict flag for validate_qemu_output.py — WARNs now pass by default in CI (no real WiFi in QEMU); use --strict to fail on warnings.

Unreleased

Added

  • QEMU ESP32-S3 testing platform (ADR-061) — 9-layer firmware testing without hardware
    • Mock CSI generator with 10 physics-based scenarios (empty room, walking, fall, multi-person, etc.)
    • Single-node QEMU runner with 16-check UART validation
    • Multi-node TDM mesh simulation (TAP networking, 2-6 nodes)
    • GDB remote debugging with VS Code integration
    • Code coverage via gcov/lcov + apptrace
    • Fuzz testing (3 libFuzzer targets + ASAN/UBSAN)
    • NVS provisioning matrix (14 configs)
    • Snapshot-based regression testing (sub-second VM restore)
    • Chaos testing with fault injection + health monitoring
  • QEMU Swarm Configurator (ADR-062) — YAML-driven multi-ESP32 test orchestration
    • 4 topologies: star, mesh, line, ring
    • 3 node roles: sensor, coordinator, gateway
    • 9 swarm-level assertions (boot, crashes, TDM, frame rate, fall detection, etc.)
    • 7 presets: smoke (2n/15s), standard (3n/60s), ci-matrix, large-mesh, line-relay, ring-fault, heterogeneous
    • Health oracle with cross-node validation
  • QEMU installer (install-qemu.sh) — auto-detects OS, installs deps, builds Espressif QEMU fork
  • Unified QEMU CLI (qemu-cli.sh) — single entry point for all 11 QEMU test commands
  • CI: firmware-qemu.yml workflow with QEMU test matrix, fuzz testing, NVS validation, and swarm test jobs
  • User guide: QEMU testing and swarm configurator section with plain-language walkthrough

Fixed

  • Firmware now boots in QEMU: WiFi/UDP/OTA/display guards for mock CSI mode

  • 9 bugs in mock_csi.c (LFSR bias, MAC filter init, scenario loop, overflow burst timing)

  • 23 bugs from ADR-061 deep review (inject_fault.py writes, CI cache, snapshot log corruption, etc.)

  • 16 bugs from ADR-062 deep review (log filename mismatch, SLIRP port collision, heap false positives, etc.)

  • All scripts: --help flags, prerequisite checks with install hints, standardized exit codes

  • Sensing server UI API completion (ADR-043) — 14 fully-functional REST endpoints for model management, CSI recording, and training control

    • Model CRUD: GET /api/v1/models, GET /api/v1/models/active, POST /api/v1/models/load, POST /api/v1/models/unload, DELETE /api/v1/models/:id, GET /api/v1/models/lora/profiles, POST /api/v1/models/lora/activate
    • CSI recording: GET /api/v1/recording/list, POST /api/v1/recording/start, POST /api/v1/recording/stop, DELETE /api/v1/recording/:id
    • Training control: GET /api/v1/train/status, POST /api/v1/train/start, POST /api/v1/train/stop
    • Recording writes CSI frames to .jsonl files via tokio background task
    • Model/recording directories scanned at startup, state managed via Arc<RwLock<AppStateInner>>
  • ADR-044: Provisioning tool enhancements — 5-phase plan for complete NVS coverage (7 missing keys), JSON config files, mesh presets, read-back/verify, and auto-detect

  • 25 real mobile tests replacing it.todo() placeholders — 205 assertions covering components, services, stores, hooks, screens, and utils

  • Project MERIDIAN (ADR-027) — Cross-environment domain generalization for WiFi pose estimation (1,858 lines, 72 tests)

    • HardwareNormalizer — Catmull-Rom cubic interpolation resamples any hardware CSI to canonical 56 subcarriers; z-score + phase sanitization
    • DomainFactorizer + GradientReversalLayer — adversarial disentanglement of pose-relevant vs environment-specific features
    • GeometryEncoder + FilmLayer — Fourier positional encoding + DeepSets + FiLM for zero-shot deployment given AP positions
    • VirtualDomainAugmentor — synthetic environment diversity (room scale, wall material, scatterers, noise) for 4x training augmentation
    • RapidAdaptation — 10-second unsupervised calibration via contrastive test-time training + LoRA adapters
    • CrossDomainEvaluator — 6-metric evaluation protocol (MPJPE in-domain/cross-domain/few-shot/cross-hardware, domain gap ratio, adaptation speedup)
  • ADR-027: Cross-Environment Domain Generalization — 10 SOTA citations (PerceptAlign, X-Fi ICLR 2025, AM-FM, DGSense, CVPR 2024)

  • Cross-platform RSSI adapters — macOS CoreWLAN (MacosCoreWlanScanner) and Linux iw (LinuxIwScanner) Rust adapters with #[cfg(target_os)] gating

  • macOS CoreWLAN Python sensing adapter with Swift helper (mac_wifi.swift)

  • macOS synthetic BSSID generation (FNV-1a hash) for Sonoma 14.4+ BSSID redaction

  • Linux iw dev <iface> scan parser with freq-to-channel conversion and scan dump (no-root) mode

  • ADR-025: macOS CoreWLAN WiFi Sensing (ORCA)

Fixed

  • sendto ENOMEM crash (Issue #127) — CSI callbacks in promiscuous mode exhaust lwIP pbuf pool causing guru meditation crash. Fixed with 50 Hz rate limiter in csi_collector.c and 100 ms ENOMEM backoff in stream_sender.c. Hardware-verified on ESP32-S3 (200+ callbacks, zero crashes)
  • Provisioning script missing TDM/edge flags (Issue #130) — Added --tdm-slot, --tdm-total, --edge-tier, --pres-thresh, --fall-thresh, --vital-win, --vital-int, --subk-count to provision.py
  • WebSocket "RECONNECTING" on Dashboard/Live DemosensingService.start() now called on app init in app.js so WebSocket connects immediately instead of waiting for Sensing tab visit
  • Mobile WebSocket portws.service.ts buildWsUrl() uses same-origin port instead of hardcoded port 3001
  • Mobile Jest configtestPathIgnorePatterns no longer silently ignores the entire test directory
  • Removed synthetic byte counters from Python MacosWifiCollector — now reports tx_bytes=0, rx_bytes=0 instead of fake incrementing values

3.0.0 - 2026-03-01

Major release: AETHER contrastive embedding model, Docker Hub images, and comprehensive UI overhaul.

Added — AETHER Contrastive Embedding Model (ADR-024)

  • Project AETHER — self-supervised contrastive learning for WiFi CSI fingerprinting, similarity search, and anomaly detection (9bbe956)
  • embedding.rs module: ProjectionHead, InfoNceLoss, CsiAugmenter, FingerprintIndex, PoseEncoder, EmbeddingExtractor (909 lines, zero external ML dependencies)
  • SimCLR-style pretraining with 5 physically-motivated augmentations (temporal jitter, subcarrier masking, Gaussian noise, phase rotation, amplitude scaling)
  • CLI flags: --pretrain, --pretrain-epochs, --embed, --build-index <type>
  • Four HNSW-compatible fingerprint index types: env_fingerprint, activity_pattern, temporal_baseline, person_track
  • Cross-modal PoseEncoder for WiFi-to-camera embedding alignment
  • VICReg regularization for embedding collapse prevention
  • 53K total parameters (55 KB at INT8) — fits on ESP32

Added — Docker & Deployment

  • Published Docker Hub images: ruvnet/wifi-densepose:latest (132 MB Rust) and ruvnet/wifi-densepose:python (569 MB) (add9f19)
  • Multi-stage Dockerfile for Rust sensing server with RuVector crates
  • docker-compose.yml orchestrating both Rust and Python services
  • RVF model export via --export-rvf and load via --load-rvf CLI flags

Added — Documentation

  • 33 use cases across 4 vertical tiers: Everyday, Specialized, Robotics & Industrial, Extreme (0afd9c5)
  • "Why WiFi Wins" comparison table (WiFi vs camera vs LIDAR vs wearable vs PIR)
  • Mermaid architecture diagrams: end-to-end pipeline, signal processing detail, deployment topology (50f0fc9)
  • Models & Training section with RuVector crate links (GitHub + crates.io), SONA component table (965a1cc)
  • RVF container section with deployment targets table (ESP32 0.7 MB to server 50+ MB)
  • Collapsible README sections for improved navigation (478d964, 99ec980, 0ebd6be)
  • Installation and Quick Start moved above Table of Contents (50acbf7)
  • CSI hardware requirement notice (528b394)

Fixed

  • UI auto-detects server port from page origin — no more hardcoded localhost:8080; works on any port (Docker :3000, native :8080, custom) (3b72f35, closes #55)
  • Docker port mismatch — server now binds 3000/3001 inside container as documented (44b9c30)
  • Added /ws/sensing WebSocket route to the HTTP server so UI only needs one port
  • Fixed README API endpoint references: /api/v1/health/health, /api/v1/sensing/api/v1/sensing/latest
  • Multi-person tracking limit corrected: configurable default 10, no hard software cap (e2ce250)

2.0.0 - 2026-02-28

Major release: complete Rust sensing server, full DensePose training pipeline, RuVector v2.0.4 integration, ESP32-S3 firmware, and 6 security hardening patches.

Added — Rust Sensing Server

  • Full DensePose-compatible REST API served by Axum (d956c30)
    • GET /health — server health
    • GET /api/v1/sensing/latest — live CSI sensing data
    • GET /api/v1/vital-signs — breathing rate (6-30 BPM) and heartbeat (40-120 BPM)
    • GET /api/v1/pose/current — 17 COCO keypoints derived from WiFi signal field
    • GET /api/v1/info — server build and feature info
    • GET /api/v1/model/info — RVF model container metadata
    • ws://host/ws/sensing — real-time WebSocket stream
  • Three data sources: --source esp32 (UDP CSI), --source windows (netsh RSSI), --source simulated (deterministic reference)
  • Auto-detection: server probes ESP32 UDP and Windows WiFi, falls back to simulated
  • Three.js visualization UI with 3D body skeleton, signal heatmap, phase plot, Doppler bars, vital signs panel
  • Static UI serving via --ui-path flag
  • Throughput: 9,52011,665 frames/sec (release build)

Added — ADR-021: Vital Sign Detection

  • VitalSignDetector with breathing (6-30 BPM) and heartbeat (40-120 BPM) extraction from CSI fluctuations (1192de9)
  • FFT-based spectral analysis with configurable band-pass filters
  • Confidence scoring based on spectral peak prominence
  • REST endpoint /api/v1/vital-signs with real-time JSON output

Added — ADR-023: DensePose Training Pipeline (Phases 1-8)

  • wifi-densepose-train crate with complete 8-phase pipeline (fc409df, ec98e40, fce1271)
    • Phase 1: DataPipeline with MM-Fi and Wi-Pose dataset loaders
    • Phase 2: CsiToPoseTransformer — 4-head cross-attention + 2-layer GCN on COCO skeleton
    • Phase 3: 6-term composite loss (MSE, bone length, symmetry, joint angle, temporal, confidence)
    • Phase 4: DynamicPersonMatcher via ruvector-mincut (O(n^1.5 log n) Hungarian assignment)
    • Phase 5: SonaAdapter — MicroLoRA rank-4 with EWC++ memory preservation
    • Phase 6: SparseInference — progressive 3-layer model loading (A: essential, B: refinement, C: full)
    • Phase 7: RvfContainer — single-file model packaging with segment-based binary format
    • Phase 8: End-to-end training with cosine-annealing LR, early stopping, checkpoint saving
  • CLI: --train, --dataset, --epochs, --save-rvf, --load-rvf, --export-rvf
  • Benchmark: ~11,665 fps inference, 229 tests passing

Added — ADR-016: RuVector Training Integration (all 5 crates)

  • ruvector-mincutDynamicPersonMatcher in metrics.rs + subcarrier selection (81ad09d, a7dd31c)
  • ruvector-attn-mincut → antenna attention in model.rs + noise-gated spectrogram
  • ruvector-temporal-tensorCompressedCsiBuffer in dataset.rs + compressed breathing/heartbeat
  • ruvector-solver → sparse subcarrier interpolation (114→56) + Fresnel triangulation
  • ruvector-attention → spatial attention in model.rs + attention-weighted BVP
  • Vendored all 11 RuVector crates under vendor/ruvector/ (d803bfe)

Added — ADR-017: RuVector Signal & MAT Integration (7 integration points)

  • gate_spectrogram() — attention-gated noise suppression (18170d7)
  • attention_weighted_bvp() — sensitivity-weighted velocity profiles
  • mincut_subcarrier_partition() — dynamic sensitive/insensitive subcarrier split
  • solve_fresnel_geometry() — TX-body-RX distance estimation
  • CompressedBreathingBuffer + CompressedHeartbeatSpectrogram
  • BreathingDetector + HeartbeatDetector (MAT crate, real FFT + micro-Doppler)
  • Feature-gated behind cfg(feature = "ruvector") (ab2453e)

Added — ADR-018: ESP32-S3 Firmware & Live CSI Pipeline

  • ESP32-S3 firmware with FreeRTOS CSI extraction (92a5182)
  • ADR-018 binary frame format: [0xAD, 0x18, len_hi, len_lo, payload]
  • Rust Esp32Aggregator receiving UDP frames on port 5005
  • bridge.rs converting I/Q pairs to amplitude/phase vectors
  • NVS provisioning for WiFi credentials
  • Pre-built binary quick start documentation (696a726)

Added — ADR-014: SOTA Signal Processing

  • 6 algorithms, 83 tests (fcb93cc)
    • Hampel filter (median + MAD, resistant to 50% contamination)
    • Conjugate multiplication (reference-antenna ratio, cancels common-mode noise)
    • Phase sanitization (unwrap + linear detrend, removes CFO/SFO)
    • Fresnel zone geometry (TX-body-RX distance from first-principles physics)
    • Body Velocity Profile (micro-Doppler extraction, 5.7x speedup)
    • Attention-gated spectrogram (learned noise suppression)

Added — ADR-015: Public Dataset Training Strategy

  • MM-Fi and Wi-Pose dataset specifications with download links (4babb32, 5dc2f66)
  • Verified dataset dimensions, sampling rates, and annotation formats
  • Cross-dataset evaluation protocol

Added — WiFi-Mat Disaster Detection Module

  • Multi-AP triangulation for through-wall survivor detection (a17b630, 6b20ff0)
  • Triage classification (breathing, heartbeat, motion)
  • Domain events: survivor_detected, survivor_updated, alert_created
  • WebSocket broadcast at /ws/mat/stream

Added — Infrastructure

  • Guided 7-step interactive installer with 8 hardware profiles (8583f3e)
  • Comprehensive build guide for Linux, macOS, Windows, Docker, ESP32 (45f8a0d)
  • 12 Architecture Decision Records (ADR-001 through ADR-012) (337dd96)

Added — UI & Visualization

  • Sensing-only UI mode with Gaussian splat visualization (b7e0f07)
  • Three.js 3D body model (17 joints, 16 limbs) with signal-viz components
  • Tabs: Dashboard, Hardware, Live Demo, Sensing, Architecture, Performance, Applications
  • WebSocket client with automatic reconnection and exponential backoff

Added — Rust Signal Processing Crate

  • Complete Rust port of WiFi-DensePose with modular workspace (6ed69a3)
    • wifi-densepose-signal — CSI processing, phase sanitization, feature extraction
    • wifi-densepose-core — shared types and configuration
    • wifi-densepose-nn — neural network inference (DensePose head, RCNN)
    • wifi-densepose-hardware — ESP32 aggregator, hardware interfaces
    • wifi-densepose-config — configuration management
  • Comprehensive benchmarks and validation tests (3ccb301)

Added — Python Sensing Pipeline

  • WindowsWifiCollector — RSSI collection via netsh wlan show networks
  • RssiFeatureExtractor — variance, spectral bands (motion 0.5-4 Hz, breathing 0.1-0.5 Hz), change points
  • PresenceClassifier — rule-based 3-state classification (ABSENT / PRESENT_STILL / ACTIVE)
  • Cross-receiver agreement scoring for multi-AP confidence boosting
  • WebSocket sensing server (ws_server.py) broadcasting JSON at 2 Hz
  • Deterministic CSI proof bundles for reproducible verification (archive/v1/data/proof/)
  • Commodity sensing unit tests (b391638)

Changed

  • Rust hardware adapters now return explicit errors instead of silent empty data (6e0e539)

Fixed

  • Review fixes for end-to-end training pipeline (45f0304)
  • Dockerfile paths updated from src/ to archive/v1/src/ (7872987)
  • IoT profile installer instructions updated for aggregator CLI (f460097)
  • process.env reference removed from browser ES module (e320bc9)

Performance

  • 5.7x Doppler extraction speedup via optimized FFT windowing (32c75c8)
  • Single 2.1 MB static binary, zero Python dependencies for Rust server

Security

  • Fix SQL injection in status command and migrations (f9d125d)
  • Fix XSS vulnerabilities in UI components (5db55fd)
  • Fix command injection in statusline.cjs (4cb01fd)
  • Fix path traversal vulnerabilities (896c4fc)
  • Fix insecure WebSocket connections — enforce wss:// on non-localhost (ac094d4)
  • Fix GitHub Actions shell injection (ab2e7b4)
  • Fix 10 additional vulnerabilities, remove 12 dead code instances (7afdad0)

1.1.0 - 2025-06-07

Added

  • Complete Python WiFi-DensePose system with CSI data extraction and router interface
  • CSI processing and phase sanitization modules
  • Batch processing for CSI data in CSIProcessor and PhaseSanitizer
  • Hardware, pose, and stream services for WiFi-DensePose API
  • Comprehensive CSS styles for UI components and dark mode support
  • API and Deployment documentation

Fixed

  • Badge links for PyPI and Docker in README
  • Async engine creation poolclass specification

1.0.0 - 2024-12-01

Added

  • Initial release of WiFi-DensePose
  • Real-time WiFi-based human pose estimation using Channel State Information (CSI)
  • DensePose neural network integration for body surface mapping
  • RESTful API with comprehensive endpoint coverage
  • WebSocket streaming for real-time pose data
  • Multi-person tracking with configurable capacity (default 10, up to 50+)
  • Fall detection and activity recognition
  • Domain configurations: healthcare, fitness, smart home, security
  • CLI interface for server management and configuration
  • Hardware abstraction layer for multiple WiFi chipsets
  • Phase sanitization and signal processing pipeline
  • Authentication and rate limiting
  • Background task management
  • Cross-platform support (Linux, macOS, Windows)

Documentation

  • User guide and API reference
  • Deployment and troubleshooting guides
  • Hardware setup and calibration instructions
  • Performance benchmarks
  • Contributing guidelines