wifi-densepose/v2/crates
rUv 17471e93ff
ADR-152: WiFi-Pose SOTA 2026 intake — WiFlow-STD benchmark, Rust integrations, ADR-153 802.11bf layer, efficiency frontier (#1008)
* feat(calibration): NodeGeometry transceiver-geometry recording (ADR-152 §2.1.1)

PerceptAlign-motivated geometry capture at enrollment: per-node optional
records (position, antenna orientation, inter-node distances, acquisition
method) — recorded when known, never required. Event-sourced via
EnrollmentEvent::GeometryRecorded (latest recording wins); persisted on
SpecialistBank with serde defaults so pre-ADR-152 bank JSON loads cleanly
(fixture-proven, and geometry-free banks serialize byte-shape-identical
to the old schema); threaded through MultiNodeMixture as data only — the
learned geometry embeddings and algorithmic fusion use are §2.1.2,
deliberately deferred until the ADR-151 P6 LoRA heads exist.

Geometry recorded from now on means banks captured today remain usable
for layout-conditioned training later — you can't retroactively add
geometry to data you didn't record.

8 new tests (3 geometry, 2 anchor, 2 bank, 1 multistatic) + full-loop
extension (2-node geometry, one tape-measured + one unknown, surviving
the bank JSON round-trip the runtime loads from). 50/50 calibration
(both feature configs) + 23 CLI tests green.

Co-Authored-By: RuFlo <ruv@ruv.net>

* feat(training): two-checkerboard camera↔room calibration for ADR-079 labels (ADR-152 §2.1.3)

Defends the camera-supervised pipeline against PerceptAlign's
"coordinate overfitting": MediaPipe keypoints were emitted in raw camera
coordinates with no shared frame and no transceiver-geometry metadata —
the exact label shape that memorizes deployment layout and collapses
cross-layout.

- scripts/calibrate-camera-room.py + calibration_lib.py: OpenCV
  two-checkerboard calibration → versioned bundle JSON (intrinsics,
  camera→room extrinsics, checkerboard spec, transceiver geometry,
  sha256 calibration_id). Intrinsics resolve from file > cache >
  multi-view computation > loud-warning 2-view fallback.
- collect-ground-truth.py --calibration <bundle>: every sample gains
  keypoints_room (unit bearing rays from the camera center in the room
  frame — documented projective alignment; raw image coords preserved
  so training chooses), camera_origin_room, calibration_id, and the
  transceiver geometry stamp. Without the flag, output is byte-identical
  to before (tested) + a one-line ADR-152 warning.

Design finding (recorded for ADR-152): a single planar checkerboard's
corner grid is centrosymmetric — the reversed corner ordering fits a
ghost camera pose with IDENTICAL reprojection error, so per-board flip
disambiguation is mathematically ill-posed. solve_two_board_extrinsics
solves the joint wall+floor set over all 4 flip combinations, where the
minimum is unique — an independent reason the TWO-checkerboard method is
required, beyond what PerceptAlign states.

15 headless pytest tests green (synthetic corners: extrinsics recovery
incl. ghost resolution, bundle round-trip + hash stability, ray
transforms w/ distortion + cross-resolution, no-calibration byte
identity).

Co-Authored-By: RuFlo <ruv@ruv.net>

* feat(benchmarks): WiFlow-STD reproduction harness + measurement (a) results (ADR-152 §2.2)

Shipped checkpoint REFUTED (0.08% PCK@20, wrong keypoint normalization);
6 reproducibility defects documented (broken imports, corrupted dataset
tail with float32-max garbage that NaN-poisons fp16 BatchNorm, unreachable
test phase). After repairs, retraining with upstream defaults reproduces
96.09% PCK@20 full-test / 96.61% corruption-free (published 97.25%) on
RTX 5080. Claims graded MEASURED-EQUIVALENT; 2.23M params + ~0.055 GFLOPs
verified. Third-party code/weights/data stay out of tree (gitignored).

Co-Authored-By: claude-flow <ruv@ruv.net>

* feat: ADR-152 Rust integrations + ADR-153 802.11bf protocol model

- calibration: GeometryEmbedding — 32-slot permutation-invariant NodeGeometry
  featurization for future LoRA-head conditioning (ADR-152 §2.1.2); derived
  SpecialistBank::geometry_embedding() accessor; 59 tests
- train: MaePretrainConfig + patchify/random-mask with UNSW measured recipe
  (80% masking, (30,3) patches; ADR-152 §2.3, arXiv 2511.18792); strict
  no-truncate/no-NaN policy; proptest properties
- train: WiFlowStdModel — tch-gated port of the verified ~96%-PCK@20
  WiFlow-STD architecture (ADR-152 §2.2 beyond-SOTA); ungated param formula
  pinned to 2,225,042; 15/17-keypoint support; 239 crate tests
- hardware: ieee80211bf forward-compatibility protocol model (ADR-153):
  SpecProfile gates, SensingCapabilities negotiation, required ConsentMode,
  session FSM, SensingTransport + SimTransport + OpportunisticCsiBridge;
  full acceptance checklist covered; 156+4 tests
- deps: ruvector bumps per ADR-152 §2.6 survey (mincut/solver 2.0.6,
  attention 2.1.0, gnn 2.2.0); vendor/ruvector synced to a083bd77f
- docs: ADR-153 accepted; ADR-152 §2.2 status, §2.4 amendment, §2.6 added

Workspace: 162 test suites green (--no-default-features); Python proof PASS.
Known pre-existing flake: homecore-api env_empty_falls_back_to_defaults
(unserialized env-var mutation) — untouched, follow-up.

Co-Authored-By: claude-flow <ruv@ruv.net>

* docs: CHANGELOG + CLAUDE.md entries for ADR-152 integrations and ADR-153

Co-Authored-By: claude-flow <ruv@ruv.net>

* fix(train): repair tch-backend bit-rot — gated path compiles and tests run again

Mechanical API refresh against current tch: Vec::from(Tensor) -> try_from
(+ explicit flatten), numel() usize cast, Rem/div ops -> remainder() /
divide_scalar_mode(floor) — the latter fixed a silent true-division bug in
heatmap argmax decoding; clamp(1.0, f64::MAX) -> clamp_min (torch 2.x scalar
overflow panic); petgraph EdgeRef import; missing EvalMetrics and
verify_checkpoint_dir APIs that tests documented. wiflow_std roundtrip test
uses safetensors (.pt _save_parameters roundtrip broken in torch 2.11
Windows). Gated: 349 passed (incl. all 20 wiflow_std); ungated: unchanged.
Known pre-existing: gaussian-heatmap convention mismatch (2 tests), proof
seed race under parallel threads — documented, deliberate follow-ups.

Co-Authored-By: claude-flow <ruv@ruv.net>

* feat(train): WiFlow-STD PyTorch->tch weight import + numerical parity proof

export_to_safetensors.py maps the retrained checkpoint (295 tensors -> 248
mapped, param sum exactly 2,225,042; num_batches_tracked dropped) into a
tch-loadable safetensors plus a deterministic parity fixture. Gated #[ignore]
integration test loads it strictly and asserts forward-pass agreement:
max abs diff 1.192e-7 on the seed-42 fixture. dump_variable_names test makes
the tch name layout authoritative. Zero architecture discrepancies found.

Co-Authored-By: claude-flow <ruv@ruv.net>

* fix: workflow-review findings — BN gamma init, ThresholdParams serde, init docs

Concurrent validation workflow (2 review lanes + adversarial verification,
13 agents): 5 confirmed findings, 3 refuted. Fixes:
- wiflow_std: pin BatchNorm gamma to 1.0 (tch default draws Uniform(0,1) —
  silently halves activations in from-scratch training; loaded checkpoints
  unaffected, parity re-verified after the change)
- wiflow_std: document the conv-init divergences vs the reference's
  effective kaiming_normal(fan_out) re-init (from-scratch dynamics only)
- ieee80211bf: ThresholdParams deserialization validates via try_from so
  the <=100 invariant holds for untrusted payloads (+ rejection test)

Benchmarks (release, ruvzen): GeometryEmbedding 1.84us/call (542k/s),
MAE tokenization 7.38us/window (135k/s), 802.11bf FSM 8.9M events/s —
nothing suspicious.

Co-Authored-By: claude-flow <ruv@ruv.net>

* docs(adr): ADR-152 §2.1.4 gate resolved — PerceptAlign repo MIT, dataset on HF

Co-Authored-By: claude-flow <ruv@ruv.net>

* feat(benchmarks): edge optimization measured + measurement (b) blocked + 92.9% retraction

Edge optimization (ADR-152 optimize track): ONNX Runtime fp32 is the CPU
latency win (3.2 ms/window, ~3.4x faster than torch, parity 2.4e-7); ORT
dynamic int8 reaches 2.44 MB (paper's ~2.2 MB claim plausible only via
conv-capable toolchains; -0.16pt PCK@20, +18% MPJPE, 2x slower); torch
dynamic quant converts 0% of this conv-only model; fp16 halves storage free
but is slower on CPU.

Measurement (b) BLOCKED-ON-DATA: only 1,077 paired ESP32 windows exist
(stop rule <2k). Forensic recheck of the surviving April holdout RETRACTS
the ADR-079 '92.9% PCK@20' figure: constant-output model, absolute (not
torso) threshold, 69 near-static frames — mean predictor scores 100% under
that protocol; torso-PCK@20 is 19.1%. Corroborates PR #535. Stale citations
removed from user-guide, readme-details, ADR-152 §2.1.3; no-citation rule
extended to ADR-079 accuracy claims. Unblock: >=2k-window multi-pose paired
session + torso-PCK re-baseline.

Co-Authored-By: claude-flow <ruv@ruv.net>

* docs(user-guide): corrected camera-supervised collection tutorial

Step 0 CSI-rate check + session-length math (window yield = frames/20 —
the May session's 8x under-delivery was a ~12 Hz CSI rate, not an aligner
bug); two-checkerboard calibration step (ADR-152 §2.1.3); pose-variety and
confidence guidance; torso-normalized PCK + temporal-split + pred-variance
eval protocol (lessons from the 92.9% retraction); scale presets re-keyed
to realistic window counts.

Co-Authored-By: claude-flow <ruv@ruv.net>

* feat(benchmarks): static PTQ int8 (calibrated) results + overnight capture script

Conv-only static QDQ beats dynamic int8 on accuracy (PCK@20 96.61-96.63%
vs 96.52%, MPJPE +10% vs +18% over fp32) at ~equal size/latency; all-ops
QDQ strictly worse (int8 activations through attention glue). Entropy
calibration verified bit-identical to MinMax on this data. Deployment:
ONNX fp32 for speed (3.2ms), static conv-only QDQ for smallest (2.53MB).

Also: scripts/overnight-empty-capture.py — segmented UDP CSI recorder for
empty-room baselines (no glob collisions, detach-safe).

Co-Authored-By: claude-flow <ruv@ruv.net>

* feat(benchmarks): measurement (b) MEASURED — optimization transfer only, mean-pose baseline wins

WiFlow-STD fine-tuned on 2,046 fresh single-room ESP32 paired windows
(temporal 70/15/15, 70->540 adapter, K=17): pretrained-init 65% PCK@20 vs
scratch 0% (optimization transfer) but frozen-trunk ~0% (no feature
transfer), and NOTHING beats the mean-pose baseline (95.9% PCK@20 —
single subject, near-static normalized coords). Honesty gates held: pred
std 0.0113 (non-constant model) but mean-baseline dominance means no
citable CSI->pose capability from this data. ADR-152 open question 1
answered partially; definitive answer needs multi-subject/position data.

Two new aligner findings: heterogeneous csi_shape with silent zero-padding
(~20%), and extractCsiMatrix's transposed shape label (frame-major data,
[nSc, nFrames] label) — fixes pending.

Co-Authored-By: claude-flow <ruv@ruv.net>

* feat(benchmarks): efficiency sweep MEASURED — half model dominates full reference

Compact WiFlow-STD variants on the same data/split/protocol: half (843,834
params, 0.38x) strictly dominates the 2.23M reference (PCK@20 96.62 vs
96.61, PCK@50 99.47 vs 99.11, MPJPE 0.00898 vs 0.0094) — the published
architecture is over-parameterized for its own benchmark. quarter (338k)
96.05%; tiny (56,290 params, 1/39.5) holds 94.11% — a ~220KB fp32 edge
candidate. In-domain caveats recorded; cross-domain untested.

Co-Authored-By: claude-flow <ruv@ruv.net>

* feat(train): compact WiFlow-STD presets in Rust + tiny edge artifact (ADR-152)

WiFlowStdConfig gains half()/quarter()/tiny() mirroring the overnight sweep
exactly: TcnGroupsMode (Fixed/Gcd/Depthwise), input_pw_groups, derived
stride schedule and decoder-mid (all default to upstream behavior; legacy
serde JSON unaffected). Param formulas pin to trained ground truth first
try: 843,834 / 338,600 / 56,290; default 2,225,042 pin and 1.192e-7 parity
unchanged. 248 tests green.

Tiny edge artifact (tiny_edge_bench.py): ONNX fp32 = 295 KB, 0.66 ms/win
(~1,500/s CPU), 94.11% PCK@20 (matches sweep clean-test exactly; parity
1.49e-7). Static int8 is a bad trade at this scale (-1.43pt, +19% MPJPE,
-16% size, slower) — recorded as negative result. Export note: width-16
breaks AdaptiveAvgPool((15,1)) TorchScript export; replaced by exact
mean+matmul equivalent, proven by parity.

Co-Authored-By: claude-flow <ruv@ruv.net>

* fix: resolve all 10 confirmed code-review findings (7-angle review, 20/20 verified)

wiflow_std: min_feature_width (default 15) replaces the keypoints->stride
coupling — for_keypoints(17) now provably builds the trained [2,2,2,2]
graph and pools 15->17, matching the validated Python protocol (pinned by
tests); param_count() total on invalid configs; random_mask returns Result
and rejects non-finite/out-of-range ratios; trainer checkpoints switched
to safetensors (.pt VarStore roundtrip broken on Windows torch 2.11).

ieee80211bf: SBP proxy now re-triggers instances and relays reports via
Action::RelaySbpReport -> SensingFrame::SbpReport (clients consume via
their existing path); missed_instances reset on success = consecutive
semantics; SessionTable gains a guarded SBP entry point + unknown-id drop
counter; initiator-role sessions reject inbound setup/SBP requests
(RejectedNotSupported) closing the idle hijack; StartSetup/StartSbp
outside Idle return InvalidStateForCommand; SBP validation unified
through evaluate_setup with a 1:1 SetupStatus->SbpStatus mapping.
events.rs split out to honor the 500-line cap.

calibration/cli: enrollment geometry now actually reaches trained banks —
both production call sites attach .with_geometry; --geometry flag on
train-room and POST /enroll/geometry + train-body geometry on
calibrate-serve give production a recording surface; geometry-free banks
log the ADR-152 §2.1.2 note.

benchmarks: corruption masks committed as ground truth (unregenerable
after in-place cleaning; verified bit-identical regeneration from the
pristine copy) + generate_corruption_masks.py producer; _bench_common.py
dedups the 5x-copied shim/evaluate/seed/remap (post-refactor PCK@20
re-verified equal to the last digit); remote scripts get the mmap patch;
tiny_edge --calib validated multiple-of-64; onnx_bench --help no longer
executes (and overwrote) the export — artifact restored byte-exact.

Workspace: 2,963 tests passed, 0 failed; Python proof PASS.

Co-Authored-By: claude-flow <ruv@ruv.net>

* ci: build workspace tests without debuginfo — runner disk exhaustion

The combined 38-crate debug target exceeds the GitHub runner's disk
('final link failed: No space left on device'); the same tree measured
151GB locally with full debuginfo. CARGO_PROFILE_{DEV,TEST}_DEBUG=0
shrinks the target ~5-10x; debuginfo serves no purpose in CI test runs.

Co-Authored-By: claude-flow <ruv@ruv.net>
2026-06-11 17:02:23 -04:00
..
cog-ha-matter chore(cogs): publish cog-ha-matter 0.3.0 + bump signal/sensing-server to 0.3.1 2026-05-25 11:01:46 -04:00
cog-person-count chore(cogs): publish cog-person-count + cog-pose-estimation 0.3.0 to crates.io 2026-05-25 10:52:47 -04:00
cog-pose-estimation test(cog-pose): cross-language adapter integration (Python producer -> Rust engine) 2026-05-31 05:22:54 -04:00
homecore docs(homecore): comprehensive README — state machine + event bus + registries 2026-05-25 23:09:16 -04:00
homecore-api feat(homecore iter 3): DELETE /api/states/<id> + confirm modal in UI 2026-05-26 15:03:40 -04:00
homecore-assist docs(homecore-assist): comprehensive README — intent recognition + Ruflo agent bridge 2026-05-25 23:13:20 -04:00
homecore-automation docs(homecore-automation): comprehensive README — YAML triggers + conditions + MiniJinja actions 2026-05-25 23:12:41 -04:00
homecore-hap docs(homecore-hap): comprehensive README — HomeKit bridge with 11 accessory types 2026-05-25 23:11:15 -04:00
homecore-migrate docs(homecore-migrate): comprehensive README — HA entity/device/config import + migration CLI 2026-05-25 23:13:58 -04:00
homecore-plugin-example HOMECORE: native Rust/WASM/TS port of Home Assistant — ADRs 125-134 implementation (#800) 2026-05-25 22:47:48 -04:00
homecore-plugins docs(homecore-plugins): comprehensive README — WASM plugin runtime + InProcess registry 2026-05-25 23:10:35 -04:00
homecore-recorder docs(homecore-recorder): comprehensive README — SQLite history + ruvector semantic search 2026-05-25 23:11:59 -04:00
homecore-server feat(homecore-server): seed 10 default entities on boot (--no-seed-entities to opt out) 2026-05-26 14:18:28 -04:00
nvsim fix(security): audit — fix RUSTSEC vulns, clippy warnings, dead code (#769) 2026-05-23 05:36:13 -04:00
nvsim-server fix(security): audit — fix RUSTSEC vulns, clippy warnings, dead code (#769) 2026-05-23 05:36:13 -04:00
ruv-neural chore(repo): rename rust-port/wifi-densepose-rs → v2/ (flatten to one level) (#427) 2026-04-25 21:28:13 -04:00
ruview-swarm fix(ruview-swarm): clippy manual_is_multiple_of in lawnmower planner 2026-05-31 10:41:05 -04:00
wifi-densepose-bfld fix(bfld): gate PrivacyAttestationProof::compute behind std 2026-05-31 10:45:38 -04:00
wifi-densepose-calibration ADR-152: WiFi-Pose SOTA 2026 intake — WiFlow-STD benchmark, Rust integrations, ADR-153 802.11bf layer, efficiency frontier (#1008) 2026-06-11 17:02:23 -04:00
wifi-densepose-cli ADR-152: WiFi-Pose SOTA 2026 intake — WiFlow-STD benchmark, Rust integrations, ADR-153 802.11bf layer, efficiency frontier (#1008) 2026-06-11 17:02:23 -04:00
wifi-densepose-core Beyond-SOTA engine/signal/train improvements: mesh partition guard, FFT CIR solver, canonical frame decoder, falsifiable occupancy benchmark, governed streaming, adapter provenance (#1018) 2026-06-11 16:08:54 -04:00
wifi-densepose-desktop fix(server): make synthetic CSI opt-in only (sibling fix to #937) (#979) 2026-06-08 18:07:39 +02:00
wifi-densepose-engine Beyond-SOTA engine/signal/train improvements: mesh partition guard, FFT CIR solver, canonical frame decoder, falsifiable occupancy benchmark, governed streaming, adapter provenance (#1018) 2026-06-11 16:08:54 -04:00
wifi-densepose-geo release: version bumps for crates.io publish (streaming-engine cascade) 2026-05-29 09:26:38 -04:00
wifi-densepose-hardware ADR-152: WiFi-Pose SOTA 2026 intake — WiFlow-STD benchmark, Rust integrations, ADR-153 802.11bf layer, efficiency frontier (#1008) 2026-06-11 17:02:23 -04:00
wifi-densepose-mat Beyond-SOTA engine/signal/train improvements: mesh partition guard, FFT CIR solver, canonical frame decoder, falsifiable occupancy benchmark, governed streaming, adapter provenance (#1018) 2026-06-11 16:08:54 -04:00
wifi-densepose-nn feat(nn): ADR-146 RF encoder multi-task heads + uncertainty (#850) 2026-05-28 23:41:25 -04:00
wifi-densepose-occworld-candle feat(worldmodel): Candle Rust port + GCP GPU scripts (ADR-147 Phase 4+6) 2026-05-29 20:52:51 -04:00
wifi-densepose-pointcloud fix(security): audit — fix RUSTSEC vulns, clippy warnings, dead code (#769) 2026-05-23 05:36:13 -04:00
wifi-densepose-ruvector release: version bumps for crates.io publish (streaming-engine cascade) 2026-05-29 09:26:38 -04:00
wifi-densepose-sensing-server Beyond-SOTA engine/signal/train improvements: mesh partition guard, FFT CIR solver, canonical frame decoder, falsifiable occupancy benchmark, governed streaming, adapter provenance (#1018) 2026-06-11 16:08:54 -04:00
wifi-densepose-signal Beyond-SOTA engine/signal/train improvements: mesh partition guard, FFT CIR solver, canonical frame decoder, falsifiable occupancy benchmark, governed streaming, adapter provenance (#1018) 2026-06-11 16:08:54 -04:00
wifi-densepose-train ADR-152: WiFi-Pose SOTA 2026 intake — WiFlow-STD benchmark, Rust integrations, ADR-153 802.11bf layer, efficiency frontier (#1008) 2026-06-11 17:02:23 -04:00
wifi-densepose-vitals fix(security): audit — fix RUSTSEC vulns, clippy warnings, dead code (#769) 2026-05-23 05:36:13 -04:00
wifi-densepose-wasm fix(security): audit — fix RUSTSEC vulns, clippy warnings, dead code (#769) 2026-05-23 05:36:13 -04:00
wifi-densepose-wasm-edge feat(nvsim): full simulator stack — Rust crate, dashboard, server, App Store, Ghost Murmur [ADR-089/090/091/092/093] 2026-04-27 12:41:01 -04:00
wifi-densepose-wifiscan fix(security): audit — fix RUSTSEC vulns, clippy warnings, dead code (#769) 2026-05-23 05:36:13 -04:00
wifi-densepose-worldgraph Beyond-SOTA engine/signal/train improvements: mesh partition guard, FFT CIR solver, canonical frame decoder, falsifiable occupancy benchmark, governed streaming, adapter provenance (#1018) 2026-06-11 16:08:54 -04:00
wifi-densepose-worldmodel feat: per-room calibration system (ADR-151) + cognitum-v0 appliance integration spec (#989) 2026-06-10 15:21:09 -04:00
README.md chore(repo): rename rust-port/wifi-densepose-rs → v2/ (flatten to one level) (#427) 2026-04-25 21:28:13 -04:00

README.md

WiFi-DensePose Rust Crates

License: MIT OR Apache-2.0 Rust 1.85+ Workspace RuVector v2.0.4 Tests

See through walls with WiFi. No cameras. No wearables. Just radio waves.

A modular Rust workspace for WiFi-based human pose estimation, vital sign monitoring, and disaster response using Channel State Information (CSI). Built on RuVector graph algorithms and the WiFi-DensePose research platform by rUv.


Performance

Operation Python v1 Rust v2 Speedup
CSI Preprocessing ~5 ms 5.19 us ~1000x
Phase Sanitization ~3 ms 3.84 us ~780x
Feature Extraction ~8 ms 9.03 us ~890x
Motion Detection ~1 ms 186 ns ~5400x
Full Pipeline ~15 ms 18.47 us ~810x
Vital Signs N/A 86 us (11,665 fps) --

Crate Overview

Core Foundation

Crate Description crates.io
wifi-densepose-core Types, traits, and utilities (CsiFrame, PoseEstimate, SignalProcessor) crates.io
wifi-densepose-config Configuration management (env, TOML, YAML) crates.io
wifi-densepose-db Database persistence (PostgreSQL, SQLite, Redis) crates.io

Signal Processing & Sensing

Crate Description RuVector Integration crates.io
wifi-densepose-signal SOTA CSI signal processing (6 algorithms from SpotFi, FarSense, Widar 3.0) ruvector-mincut, ruvector-attn-mincut, ruvector-attention, ruvector-solver crates.io
wifi-densepose-vitals Vital sign extraction: breathing (6-30 BPM) and heart rate (40-120 BPM) -- crates.io
wifi-densepose-wifiscan Multi-BSSID WiFi scanning for Windows-enhanced sensing -- crates.io

Neural Network & Training

Crate Description RuVector Integration crates.io
wifi-densepose-nn Multi-backend inference (ONNX, PyTorch, Candle) with DensePose head (24 body parts) -- crates.io
wifi-densepose-train Training pipeline with MM-Fi dataset, 114->56 subcarrier interpolation All 5 crates crates.io

Disaster Response

Crate Description RuVector Integration crates.io
wifi-densepose-mat Mass Casualty Assessment Tool -- survivor detection, triage, multi-AP localization ruvector-solver, ruvector-temporal-tensor crates.io

Hardware & Deployment

Crate Description crates.io
wifi-densepose-hardware ESP32, Intel 5300, Atheros CSI sensor interfaces (pure Rust, no FFI) crates.io
wifi-densepose-wasm WebAssembly bindings for browser-based disaster dashboard crates.io
wifi-densepose-sensing-server Axum server: ESP32 UDP ingestion, WebSocket broadcast, sensing UI crates.io

Applications

Crate Description crates.io
wifi-densepose-api REST + WebSocket API layer crates.io
wifi-densepose-cli Command-line tool for MAT disaster scanning crates.io

Architecture

                          wifi-densepose-core
                         (types, traits, errors)
                                  |
              +-------------------+-------------------+
              |                   |                   |
    wifi-densepose-signal   wifi-densepose-nn   wifi-densepose-hardware
    (CSI processing)        (inference)         (ESP32, Intel 5300)
    + ruvector-mincut       + ONNX Runtime          |
    + ruvector-attn-mincut  + PyTorch (tch)   wifi-densepose-vitals
    + ruvector-attention    + Candle          (breathing, heart rate)
    + ruvector-solver            |
              |                  |             wifi-densepose-wifiscan
              +--------+---------+            (BSSID scanning)
                       |
          +------------+------------+
          |                         |
  wifi-densepose-train    wifi-densepose-mat
  (training pipeline)     (disaster response)
  + ALL 5 ruvector        + ruvector-solver
                          + ruvector-temporal-tensor
                                |
              +-----------------+-----------------+
              |                 |                 |
    wifi-densepose-api  wifi-densepose-wasm  wifi-densepose-cli
    (REST/WS)           (browser WASM)       (CLI tool)
              |
    wifi-densepose-sensing-server
    (Axum + WebSocket)

RuVector Integration

All RuVector crates at v2.0.4 from crates.io:

RuVector Crate Used In Purpose
ruvector-mincut signal, train Dynamic min-cut for subcarrier selection & person matching
ruvector-attn-mincut signal, train Attention-weighted min-cut for antenna gating & spectrograms
ruvector-temporal-tensor train, mat Tiered temporal compression (4-10x memory reduction)
ruvector-solver signal, train, mat Sparse Neumann solver for interpolation & triangulation
ruvector-attention signal, train Scaled dot-product attention for spatial features & BVP

Signal Processing Algorithms

Six state-of-the-art algorithms implemented in wifi-densepose-signal:

Algorithm Paper Year Module
Conjugate Multiplication SpotFi (SIGCOMM) 2015 csi_ratio.rs
Hampel Filter WiGest 2015 hampel.rs
Fresnel Zone Model FarSense (MobiCom) 2019 fresnel.rs
CSI Spectrogram Standard STFT 2018+ spectrogram.rs
Subcarrier Selection WiDance (MobiCom) 2017 subcarrier_selection.rs
Body Velocity Profile Widar 3.0 (MobiSys) 2019 bvp.rs

Quick Start

As a Library

use wifi_densepose_core::{CsiFrame, CsiMetadata, SignalProcessor};
use wifi_densepose_signal::{CsiProcessor, CsiProcessorConfig};

// Configure the CSI processor
let config = CsiProcessorConfig::default();
let processor = CsiProcessor::new(config);

// Process a CSI frame
let frame = CsiFrame { /* ... */ };
let processed = processor.process(&frame)?;

Vital Sign Monitoring

use wifi_densepose_vitals::{
    CsiVitalPreprocessor, BreathingExtractor, HeartRateExtractor,
    VitalAnomalyDetector,
};

let mut preprocessor = CsiVitalPreprocessor::new(56); // 56 subcarriers
let mut breathing = BreathingExtractor::new(100.0);    // 100 Hz sample rate
let mut heartrate = HeartRateExtractor::new(100.0);

// Feed CSI frames and extract vitals
for frame in csi_stream {
    let residuals = preprocessor.update(&frame.amplitudes);
    if let Some(bpm) = breathing.push_residuals(&residuals) {
        println!("Breathing: {:.1} BPM", bpm);
    }
}

Disaster Response (MAT)

use wifi_densepose_mat::{DisasterResponse, DisasterConfig, DisasterType};

let config = DisasterConfig {
    disaster_type: DisasterType::Earthquake,
    max_scan_zones: 16,
    ..Default::default()
};

let mut responder = DisasterResponse::new(config);
responder.add_scan_zone(zone)?;
responder.start_continuous_scan().await?;

Hardware (ESP32)

use wifi_densepose_hardware::{Esp32CsiParser, CsiFrame};

let parser = Esp32CsiParser::new();
let raw_bytes: &[u8] = /* UDP packet from ESP32 */;
let frame: CsiFrame = parser.parse(raw_bytes)?;
println!("RSSI: {} dBm, {} subcarriers", frame.metadata.rssi, frame.subcarriers.len());

Training

# Check training crate (no GPU needed)
cargo check -p wifi-densepose-train --no-default-features

# Run training with GPU (requires tch/libtorch)
cargo run -p wifi-densepose-train --features tch-backend --bin train -- \
    --config training.toml --dataset /path/to/mmfi

# Verify deterministic training proof
cargo run -p wifi-densepose-train --features tch-backend --bin verify-training

Building

# Clone the repository
git clone https://github.com/ruvnet/wifi-densepose.git
cd wifi-densepose/v2

# Check workspace (no GPU dependencies)
cargo check --workspace --no-default-features

# Run all tests
cargo test --workspace --no-default-features

# Build release
cargo build --release --workspace

Feature Flags

Crate Feature Description
wifi-densepose-nn onnx (default) ONNX Runtime backend
wifi-densepose-nn tch-backend PyTorch (libtorch) backend
wifi-densepose-nn candle-backend Candle (pure Rust) backend
wifi-densepose-nn cuda CUDA GPU acceleration
wifi-densepose-train tch-backend Enable GPU training modules
wifi-densepose-mat ruvector (default) RuVector graph algorithms
wifi-densepose-mat api (default) REST + WebSocket API
wifi-densepose-mat distributed Multi-node coordination
wifi-densepose-mat drone Drone-mounted scanning
wifi-densepose-hardware esp32 ESP32 protocol support
wifi-densepose-hardware intel5300 Intel 5300 CSI Tool
wifi-densepose-hardware linux-wifi Linux commodity WiFi
wifi-densepose-wifiscan wlanapi Windows WLAN API async scanning
wifi-densepose-core serde Serialization support
wifi-densepose-core async Async trait support

Testing

# Unit tests (all crates)
cargo test --workspace --no-default-features

# Signal processing benchmarks
cargo bench -p wifi-densepose-signal

# Training benchmarks
cargo bench -p wifi-densepose-train --no-default-features

# Detection benchmarks
cargo bench -p wifi-densepose-mat

Supported Hardware

Hardware Crate Feature CSI Subcarriers Cost
ESP32-S3 Mesh (3-6 nodes) hardware/esp32 52-56 ~$54
Intel 5300 NIC hardware/intel5300 30 ~$50
Atheros AR9580 hardware/linux-wifi 56 ~$100
Any WiFi (Windows/Linux) wifiscan RSSI-only $0

Architecture Decision Records

Key design decisions documented in docs/adr/:

ADR Title Status
ADR-014 SOTA Signal Processing Accepted
ADR-015 MM-Fi + Wi-Pose Training Datasets Accepted
ADR-016 RuVector Training Pipeline Accepted (Complete)
ADR-017 RuVector Signal + MAT Integration Accepted
ADR-021 Vital Sign Detection Pipeline Accepted
ADR-022 Windows WiFi Enhanced Sensing Accepted
ADR-024 Contrastive CSI Embedding Model Accepted
  • WiFi-DensePose -- Main repository (Python v1 + Rust v2)
  • RuVector -- Graph algorithms for neural networks (5 crates, v2.0.4)
  • rUv -- Creator and maintainer

License

All crates are dual-licensed under MIT OR Apache-2.0.

Copyright (c) 2024 rUv