Add environment-tuned activity classification that learns from labeled
ESP32 CSI recordings, replacing brittle static thresholds.
- Adaptive classifier: 15-feature logistic regression trained from JSONL
recordings (variance, motion band, subcarrier stats: skew, kurtosis,
entropy, IQR). Trains in <1s, persists as JSON, auto-loads on restart.
- Three-stage signal smoothing: adaptive baseline subtraction (α=0.003),
EMA + trimmed-mean median filter (21-frame window), hysteresis debounce
(4 frames). Motion classification now stable across seconds, not frames.
- Vital signs stabilization: outlier rejection (±8 BPM HR, ±2 BPM BR),
trimmed mean, dead-band (±2 BPM HR), EMA α=0.02. HR holds steady for
10+ seconds instead of jumping 50 BPM every frame.
- Observatory auto-detect: always probes /health on startup, connects
WebSocket to live ESP32 data automatically.
- New API endpoints: POST /api/v1/adaptive/train, GET /adaptive/status,
POST /adaptive/unload for runtime model management.
- Updated user guide with Observatory, adaptive classifier tutorial,
signal smoothing docs, and new troubleshooting entries.
- Add intro explaining DDD purpose and bounded context overview table
- Add Edge Intelligence bounded context (#7) for on-device sensing
- Add ubiquitous language terms: Edge Tier, WASM Module
- Fix frame rate 20 Hz -> 28 Hz (measured on hardware)
- Link each context to its source files and ADRs
- Add NVS configuration table and invariants for edge processing
- Create docs/ddd/README.md introducing all 3 domain models
- Update main README docs table to link to DDD index
Co-Authored-By: claude-flow <ruv@ruv.net>
Explains why ADRs matter for AI-generated code (prevents drift,
provides constraints and rationale), how they work with DDD domain
models, and indexes all 44 ADRs by category.
Also fixes ADR count 43 -> 44 in main README.
Co-Authored-By: claude-flow <ruv@ruv.net>
- CHANGELOG: add ADR-043 entries (14 new API endpoints, WebSocket fix,
mobile WS fix, 25 real mobile tests)
- README: update ADR count from 41 to 43
- CLAUDE.md: update ADR count from 32 to 43
- User guide: add 14 new REST endpoints to API reference table, note
that /ws/sensing is available on the HTTP port, update ADR count
The web UI had persistent 404 errors on model, recording, and training
endpoints, and the sensing WebSocket never connected on Dashboard/Live
Demo tabs because sensingService.start() was only called lazily on
Sensing tab visit.
Server (main.rs):
- Add 14 fully-functional Axum handlers: model CRUD (7), recording
lifecycle (4), training control (3)
- Scan data/models/ and data/recordings/ at startup
- Recording writes CSI frames to .jsonl via tokio background task
- Model load/unload lifecycle with state tracking
Web UI (app.js):
- Import and start sensingService early in initializeServices() so
Dashboard and Live Demo tabs connect to /ws/sensing immediately
Mobile (ws.service.ts):
- Fix WebSocket URL builder to use same-origin port instead of
hardcoded port 3001
Mobile (jest.config.js):
- Fix testPathIgnorePatterns that was ignoring the entire test directory
Mobile (25 test files):
- Replace all it.todo() placeholder tests with real implementations
covering components, services, stores, hooks, screens, and utils
ADR-043 documents all changes.
- Move provision.py from release-only asset into firmware/esp32-csi-node/
- Fix user guide references from scripts/provision.py to correct path
- Update release link to v0.2.0-esp32
Co-Authored-By: claude-flow <ruv@ruv.net>
GOAP-based planning system for dynamically prioritizing which ADRs to
implement next based on current project state, available hardware, user
goals, and resource constraints.
Key design decisions:
- 25 boolean feature flags + 5 hardware flags + 6 quality metrics
- ~80 actions mapped to ADR implementation phases
- Sublinear search via backward relevance pruning, hierarchical tier
decomposition, incremental replanning, and admissible heuristics
- PageRank-based priority when no specific goal is given
- Integration with claude-flow swarm for dispatching to agents
Co-Authored-By: claude-flow <ruv@ruv.net>
Replace dead URLs for MM-Fi and Wi-Pose datasets with working links:
- MM-Fi: https://ntu-aiot-lab.github.io/mm-fi + GitHub repo with download links
- Wi-Pose: https://github.com/NjtechCVLab/Wi-PoseDataset with Google Drive links
Also corrects Wi-Pose source attribution (Entropy 2023, 12 subjects).
Fixes#84
Co-Authored-By: claude-flow <ruv@ruv.net>
Four-phase approach: eigenvalue-based person count estimation, NMF signal
decomposition, multi-skeleton generation with Kalman tracking, and neural
multi-person model training via RVF pipeline.
Ref: #97
Co-Authored-By: claude-flow <ruv@ruv.net>
* feat: RVF training pipeline & UI integration (ADR-036)
Implement full model training, management, and inference pipeline:
Backend (Rust):
- recording.rs: CSI recording API (start/stop/list/download/delete)
- model_manager.rs: RVF model loading, LoRA profile switching, model library
- training_api.rs: Training API with WebSocket progress streaming, simulated
training mode with realistic loss curves, auto-RVF export on completion
- main.rs: Wire new modules, recording hooks in all CSI paths, data dirs
UI (new components):
- ModelPanel.js: Dark-mode model library with load/unload, LoRA dropdown
- TrainingPanel.js: Recording controls, training config, live Canvas charts
- model.service.js: Model REST API client with events
- training.service.js: Training + recording API client with WebSocket progress
UI (enhancements):
- LiveDemoTab: Model selector, LoRA profile switcher, A/B split view toggle,
training quick-panel with 60s recording shortcut
- SettingsPanel: Full dark mode conversion (issue #92), model configuration
(device, threads, auto-load), training configuration (epochs, LR, patience)
- PoseDetectionCanvas: 10-frame pose trail with ghost keypoints and motion
trajectory lines, cyan trail toggle button
- pose.service.js: Model-inference confidence thresholds
UI (plumbing):
- index.html: Training tab (8th tab)
- app.js: Panel initialization and tab routing
- style.css: ~250 lines of training/model panel dark-mode styles
191 Rust tests pass, 0 failures. Closes#92.
Refs: ADR-036, #93
Co-Authored-By: claude-flow <ruv@ruv.net>
* fix: real RuVector training pipeline + UI service fixes
Training pipeline (training_api.rs):
- Replace simulated training with real signal-based training loop
- Load actual CSI data from .csi.jsonl recordings or live frame history
- Extract 180 features per frame: subcarrier amplitudes, temporal variance,
Goertzel frequency analysis (9 bands), motion gradients, global stats
- Train calibrated linear CSI-to-pose mapping via mini-batch gradient descent
with L2 regularization (ridge regression), Xavier init, cosine LR decay
- Self-supervised: teacher targets from derive_pose_from_sensing() heuristics
- Real validation metrics: MSE and PCK@0.2 on 80/20 train/val split
- Export trained .rvf with real weights, feature normalization stats, witness
- Add infer_pose_from_model() for live inference from trained model
- 16 new tests covering features, training, inference, serialization
UI fixes:
- Fix double-URL bug in model.service.js and training.service.js
(buildApiUrl was called twice — once in service, once in apiService)
- Fix route paths to match Rust backend (/api/v1/train/*, /api/v1/recording/*)
- Fix request body formats (session_name, nested config object)
- Fix top-level await in LiveDemoTab.js blocking module graph
- Dynamic imports for ModelPanel/TrainingPanel in app.js
- Center nav tabs with flex-wrap for 8-tab layout
Co-Authored-By: claude-flow <ruv@ruv.net>
* fix: WebSocket onOpen race condition, data source indicators, auto-start pose detection
- Fix WebSocket onOpen race condition in websocket.service.js where
setupEventHandlers replaced onopen after socket was already open,
preventing pose service from receiving connection signal
- Add 4-state data source indicator (LIVE/SIMULATED/RECONNECTING/OFFLINE)
across Dashboard, Sensing, and Live Demo tabs via sensing.service.js
- Add hot-plug ESP32 auto-detection in sensing server (auto mode runs
both UDP listener and simulation, switches on ESP32_TIMEOUT)
- Auto-start pose detection when backend is reachable
- Hide duplicate PoseDetectionCanvas controls when enableControls=false
- Add standalone Demo button in LiveDemoTab for offline animated demo
- Add data source banner and status styling
Co-Authored-By: claude-flow <ruv@ruv.net>
- Docker default changed from --source simulated to --source auto
(auto-detects ESP32 on UDP 5005, falls back to simulation)
- Pose derivation now driven by real sensing features: motion_band_power,
breathing_band_power, variance, dominant_freq_hz, change_points
- Temporal feature extraction: 100-frame circular buffer, Goertzel
breathing rate estimation (0.1-0.5 Hz), frame-to-frame L2 motion
detection, SNR-based signal quality metric
- Signal field driven by subcarrier variance spatial mapping instead
of fixed animation circle
- UI data source indicators: LIVE/RECONNECTING/SIMULATED banner on
sensing tab, estimation mode badge on live demo tab
- Setup guide panel explaining ESP32 count requirements for each
capability level (1x: presence, 3x: localization, 4x+: full pose)
- Tick rate improved from 500ms to 100ms (2fps to 10fps)
- Fixed Option<f64> division bug from PR #83
- ADR-035 documents all decisions
Closes#86
Co-Authored-By: claude-flow <ruv@ruv.net>
- Added IosRssiService to handle synthetic RSSI data for iOS.
- Created WebRssiService to simulate RSSI scanning on the web.
- Defined shared types for WifiNetwork and RssiService in rssi.service.ts.
- Introduced simulation service to generate synthetic sensing data.
- Implemented WebSocket service for real-time data handling with reconnection logic.
- Established Zustand stores for managing application state related to MAT and pose data.
- Developed theme context and utility functions for consistent styling and formatting.
- Added type definitions for various application entities including API responses and sensing data.
- Created utility functions for color mapping and URL validation.
- Configured TypeScript settings for the mobile application.
- CHANGELOG: add MERIDIAN (ADR-027) to Unreleased section
- README: add "Works Everywhere" to Intelligence features, update How It Works
- ADR-002: status → Superseded by ADR-016/017
- ADR-004: status → Partially realized by ADR-024, extended by ADR-027
- ADR-005: status → Partially realized by ADR-023, extended by ADR-027
- ADR-006: status → Partially realized by ADR-023, extended by ADR-027
Co-Authored-By: claude-flow <ruv@ruv.net>
Deep SOTA research into WiFi sensing domain gap problem (2024-2026).
Proposes 7-phase implementation: hardware normalization, domain-adversarial
training with gradient reversal, geometry-conditioned FiLM inference,
virtual environment augmentation, few-shot rapid adaptation, and
cross-domain evaluation protocol.
Cites 10 papers: PerceptAlign, AdaPose, Person-in-WiFi 3D (CVPR 2024),
DGSense, CAPC, X-Fi (ICLR 2025), AM-FM, LatentCSI, Ganin GRL, FiLM.
Addresses the single biggest deployment blocker: models trained in one
room lose 40-70% accuracy in another room. MERIDIAN adds ~12K params
(67K total, still fits ESP32) for cross-layout + cross-hardware
generalization with zero-shot and few-shot adaptation paths.
Co-Authored-By: claude-flow <ruv@ruv.net>
ADR-026 documents the design decision to add a tracking bounded context
to wifi-densepose-mat to address three gaps: no Kalman filter, no CSI
fingerprint re-ID across temporal gaps, and no explicit track lifecycle
state machine.
Changes:
- docs/adr/ADR-026-survivor-track-lifecycle.md — full design record
- domain/events.rs — TrackingEvent enum (Born/Lost/Reidentified/Terminated/Rescued)
with DomainEvent::Tracking variant and timestamp/event_type impls
- tracking/mod.rs — module root with re-exports
- tracking/kalman.rs — constant-velocity 3-D Kalman filter (predict/update/gate)
- tracking/lifecycle.rs — TrackState, TrackLifecycle, TrackerConfig
Remaining (in progress): fingerprint.rs, tracker.rs, lib.rs integration
https://claude.ai/code/session_0164UZu6rG6gA15HmVyLZAmU
- Introduced ADR-025 documenting the implementation of a macOS CoreWLAN sensing adapter using a Swift helper binary and Rust integration.
- Added a new user guide detailing installation, usage, and hardware setup for WiFi DensePose, including Docker and source build instructions.
- Included sections on data sources, REST API reference, WebSocket streaming, and vital sign detection.
- Documented hardware requirements and troubleshooting steps for various setups.
- Add Python WebSocket sensing server (ws_server.py) with ESP32 UDP CSI
and Windows RSSI auto-detect collectors on port 8765
- Add Three.js Gaussian splat renderer with custom GLSL shaders for
real-time WiFi signal field visualization (blue→green→red gradient)
- Add SensingTab component with RSSI sparkline, feature meters, and
motion classification badge
- Add sensing.service.js WebSocket client with reconnect and simulation fallback
- Implement sensing-only mode: suppress all DensePose API calls when
FastAPI backend (port 8000) is not running, clean console output
- ADR-019: Document sensing-only UI architecture and data flow
- ADR-020: Migrate AI/model inference to Rust with RuVector ONNX Runtime,
replacing ~2.7GB Python stack with ~50MB static binary
- Add ruvnet/ruvector as upstream remote for RuVector crate ecosystem
Co-Authored-By: claude-flow <ruv@ruv.net>
ADR-012 now reflects the actual working firmware: NVS runtime config,
Docker build workflow, pre-built binary release, and verified metrics
(20 Hz, zero frame loss). Status changed from Proposed to Accepted.
Co-Authored-By: claude-flow <ruv@ruv.net>
Documents the concrete 4-layer development sequence for closing the
hardware gap: firmware (ESP-IDF C), UDP aggregator (Rust), CsiFrame→CsiData
bridge, and Python _read_raw_data() UDP socket replacement. Builds on
ADR-012 architecture and existing wifi-densepose-hardware parser crate.
Includes testability path for all layers before hardware acquisition.
https://claude.ai/code/session_01BSBAQJ34SLkiJy4A8SoiL4
Production code:
- pose_service.py: real uptime tracking (_start_time), real calibration
state machine (_calibration_in_progress, _calibration_id), proper
get_calibration_status() using elapsed time, uptime in health_check()
- health.py: _APP_START_TIME module constant for real uptime_seconds
- dependencies.py: remove TODO, document JWT config requirement clearly
ADR-017 status: Proposed → Accepted (all 7 integrations complete)
Test fixes (170 unit tests — 0 failures):
- Fix hardcoded /workspaces/wifi-densepose devcontainer paths in 4 files;
replaced with os.path relative to __file__
- test_csi_extractor_tdd/standalone: update ESP32 fixture to provide
correct 3×56 amplitude+phase values (was only 3 values)
- test_csi_standalone/tdd_complete: Atheros tests now expect
CSIExtractionError (implementation raises it correctly)
- test_router_interface_tdd: register module in sys.modules so
patch('src.hardware.router_interface...') resolves; fix
test_should_parse_csi_response to expect RouterConnectionError
- test_csi_processor: rewrite to use actual preprocess_csi_data /
extract_features API with proper CSIData fixtures; fix constructor
- test_phase_sanitizer: fix constructor (requires config), rename
sanitize() → sanitize_phase(), fix empty-data fixture (use 2D array),
fix phase data to stay within [-π, π] validation range
Proof bundle: PASS — SHA-256 hash matches, no random patterns in prod code
https://claude.ai/code/session_01BSBAQJ34SLkiJy4A8SoiL4