wifi-densepose/v2/crates
rUv 6959a42312
feat(cog-person-count): v0.0.1 scaffold + tests + fusion math + bench (ADR-103) (#694)
First implementation PR for ADR-103. Same incremental shape that
ADR-101 used: scaffold the cog crate, ship a stub-backend release
that satisfies the runtime contract + 15 tests + measured cold-start,
then follow up with the trained count_v1.safetensors in a separate PR.

What ships:

* v2/crates/cog-person-count/ — new workspace member.
    - Cargo.toml: candle-core/candle-nn 0.9 (cpu default, cuda feature
      opt-in), safetensors, ureq, sha2 — same dep shape as the pose cog
      but minus wifi-densepose-train (this cog has no training-side
      consumer, so the dep tree is materially smaller → 2.36 MB
      binary vs the pose cog's 4.5 MB).
    - src/inference.rs: CountNet (Conv1d 56→64→128→128 encoder + count
      head Linear(128→64→8)+softmax + confidence head
      Linear(128→32→1)+sigmoid). Stub backend returns
      `{1-person, 0-confidence}` honestly when no safetensors present.
    - src/fusion.rs: fuse_confidence_weighted() — Bayesian product of
      per-node distributions with confidence-weighted log-sum, plus
      fuse_with_mincut_clip() hook for the v0.2.0 Stoer-Wagner
      upper-bound (`ruvector-mincut` dep lands when min-cut graph
      builder is ready). Confidences floored at 1e-3 and probs floored
      at 1e-9 before logs — no NaN propagation.
    - src/publisher.rs: emits {count, confidence, count_p95_low,
      count_p95_high, n_nodes, probs} per ADR-103 §"Output".
    - src/main.rs: full ADR-100 four-verb CLI (version|manifest|health
      |run). The `run` subcommand explicitly returns "wiring pending
      v0.0.1" so the in-process library API is the v0.0.1-clean
      integration path.
    - tests/smoke.rs (8 tests) + fusion::tests (7 tests, in-lib) — 15
      total, all green. Cover stub-backend behaviour, wrong-shape
      rejection, fusion math (empty / single / agreement / high-conf
      override / normalisation), p95-range correctness, and min-cut
      clip semantics.
    - cog/{manifest.template.json, config.schema.json, README.md} +
      cog/artifacts/ placeholder dir.

* v2/Cargo.toml: registers the new workspace member.

Verified locally:

  cargo check -p cog-person-count --no-default-features    → clean
  cargo test  -p cog-person-count --no-default-features    → 8/8 pass
  cargo test  -p cog-person-count --lib                    → 7/7 pass
  cargo build -p cog-person-count --release                → 2.36 MB binary
  ./cog-person-count version                               → "person-count 0.3.0"
  ./cog-person-count manifest                              → JSON skeleton
  ./cog-person-count health                                → backend:stub,
                                                              count:1, conf:0,
                                                              p95:[1,1]
  Cold-start: 30 sequential `health` invocations → 53.3 ms/invocation
              (vs cog-pose-estimation's 76.2 ms — smaller dep tree)

cog/README.md adds:

* Security section — six-row threat table covering safetensor mmap
  trust, non-finite outputs, sensing fetch failures, fusion
  divide-by-zero / log-of-zero, min-cut degenerate cases, and stdout
  spoofing.
* Performance / optimization section — binary size, release profile
  (already opt-level=3 / lto=fat / codegen-units=1 / strip=true at
  workspace level), cold-start comparison table, projected warm-path
  latency budget.

Still pending (separate PRs, ADR-103 §"Migration"):

* Train count_v1.safetensors on the existing 1,077 paired samples
  with `n_persons` labels (Candle on RTX 5080, same script that
  produced pose_v1.safetensors yesterday).
* `run` subcommand wiring (long-running polling loop, same shape as
  cog-pose-estimation::runtime).
* Cross-compile + sign + GCS upload (mirror of cog-pose-estimation
  release pipeline).
* Server-side `csi.rs::score_to_person_count` call-site rewire to
  consume this cog when installed; falls back to PR #491's heuristic
  when not.
2026-05-21 18:46:57 -04:00
..
cog-person-count feat(cog-person-count): v0.0.1 scaffold + tests + fusion math + bench (ADR-103) (#694) 2026-05-21 18:46:57 -04:00
cog-pose-estimation docs: repoint #640 references to #645 (original deleted, replaced) (#646) 2026-05-19 17:18:05 -04:00
nvsim 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
nvsim-server fix(ci): wasm-pack PATH + Dockerfile workspace stub (#440) 2026-04-27 12:49:03 -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
wifi-densepose-cli chore(deps): bump console from 0.15.11 to 0.16.3 in /v2 (#471) 2026-05-17 18:10:01 -04:00
wifi-densepose-core chore(repo): rename rust-port/wifi-densepose-rs → v2/ (flatten to one level) (#427) 2026-04-25 21:28:13 -04:00
wifi-densepose-desktop chore(deps): bump @tauri-apps/plugin-dialog (#462) 2026-05-17 18:11:58 -04:00
wifi-densepose-geo chore(repo): rename rust-port/wifi-densepose-rs → v2/ (flatten to one level) (#427) 2026-04-25 21:28:13 -04:00
wifi-densepose-hardware chore(deps): bump thiserror from 1.0.69 to 2.0.18 in /v2 (#469) 2026-05-17 18:09:54 -04:00
wifi-densepose-mat chore(deps): bump thiserror from 1.0.69 to 2.0.18 in /v2 (#469) 2026-05-17 18:09:54 -04:00
wifi-densepose-nn chore(repo): rename rust-port/wifi-densepose-rs → v2/ (flatten to one level) (#427) 2026-04-25 21:28:13 -04:00
wifi-densepose-pointcloud fix(pointcloud): exponential backoff on unreachable backend + status banner 2026-04-29 23:03:05 -04:00
wifi-densepose-ruvector feat(ruvector,signal,sensing-server): ADR-084 Passes 1/1.5/2/3 — RaBitQ similarity sensor implementation (#435) 2026-04-26 02:21:35 -04:00
wifi-densepose-sensing-server feat(edge-registry): ADR-102 — surface Cognitum cog catalog via /api/v1/edge/registry (#648) 2026-05-19 18:08:43 -04:00
wifi-densepose-signal feat(ruvector,signal,sensing-server): ADR-084 Passes 1/1.5/2/3 — RaBitQ similarity sensor implementation (#435) 2026-04-26 02:21:35 -04:00
wifi-densepose-train chore(release): wifi-densepose-train 0.3.0 -> 0.3.1 2026-05-11 23:59:50 -04:00
wifi-densepose-vitals chore(repo): rename rust-port/wifi-densepose-rs → v2/ (flatten to one level) (#427) 2026-04-25 21:28:13 -04:00
wifi-densepose-wasm chore(repo): rename rust-port/wifi-densepose-rs → v2/ (flatten to one level) (#427) 2026-04-25 21:28:13 -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 chore(repo): move v1/ → archive/v1/ + add archive/README.md (#430) 2026-04-25 23:07:52 -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