Files
wifi-densepose/rust-port/wifi-densepose-rs/crates/wifi-densepose-ruvector/README.md
Claude ed3261fbcb feat(ruvector): implement ADR-017 as wifi-densepose-ruvector crate + fix MAT warnings
New crate `wifi-densepose-ruvector` implements all 7 ruvector v2.0.4
integration points from ADR-017 (signal processing + MAT disaster detection):

signal::subcarrier   — mincut_subcarrier_partition (ruvector-mincut)
signal::spectrogram  — gate_spectrogram (ruvector-attn-mincut)
signal::bvp          — attention_weighted_bvp (ruvector-attention)
signal::fresnel      — solve_fresnel_geometry (ruvector-solver)
mat::triangulation   — solve_triangulation TDoA (ruvector-solver)
mat::breathing       — CompressedBreathingBuffer 50-75% mem reduction (ruvector-temporal-tensor)
mat::heartbeat       — CompressedHeartbeatSpectrogram tiered compression (ruvector-temporal-tensor)

16 tests, 0 compilation errors. Workspace grows from 14 → 15 crates.

MAT crate: fix all 54 warnings (0 remaining in wifi-densepose-mat):
- Remove unused imports (Arc, HashMap, RwLock, mpsc, Mutex, ConfidenceScore, etc.)
- Prefix unused variables with _ (timestamp_low, agc, perm)
- Add #![allow(unexpected_cfgs)] for onnx feature gates in ML files
- Move onnx-conditional imports under #[cfg(feature = "onnx")] guards

README: update crate count 14→15, ADR count 24→26, add ruvector crate
table with 7-row integration summary.

Total tests: 939 → 955 (16 new). All passing, 0 regressions.

https://claude.ai/code/session_0164UZu6rG6gA15HmVyLZAmU
2026-03-01 15:50:05 +00:00

3.6 KiB
Raw Blame History

wifi-densepose-ruvector

RuVector v2.0.4 integration layer for WiFi-DensePose — ADR-017.

This crate implements all 7 ADR-017 ruvector integration points for the signal-processing pipeline and the Multi-AP Triage (MAT) disaster-detection module.

Integration Points

File ruvector crate What it does Benefit
signal/subcarrier ruvector-mincut Graph min-cut partitions subcarriers into sensitive / insensitive groups based on body-motion correlation Automatic subcarrier selection without hand-tuned thresholds
signal/spectrogram ruvector-attn-mincut Attention-guided min-cut gating suppresses noise frames, amplifies body-motion periods Cleaner Doppler spectrogram input to DensePose head
signal/bvp ruvector-attention Scaled dot-product attention aggregates per-subcarrier STFT rows weighted by sensitivity Robust body velocity profile even with missing subcarriers
signal/fresnel ruvector-solver Sparse regularized least-squares estimates TX-body (d1) and body-RX (d2) distances from multi-subcarrier Fresnel amplitude observations Physics-grounded geometry without extra hardware
mat/triangulation ruvector-solver Neumann series solver linearises TDoA hyperbolic equations to estimate 2-D survivor position across multi-AP deployments Sub-5 m accuracy from ≥3 TDoA pairs
mat/breathing ruvector-temporal-tensor Tiered quantized streaming buffer: hot ~10 frames at 8-bit, warm at 57-bit, cold at 3-bit 13.4 MB raw → 3.46.7 MB for 56 sc × 60 s × 100 Hz
mat/heartbeat ruvector-temporal-tensor Per-frequency-bin tiered compressor for heartbeat spectrogram; band_power() extracts mean squared energy in any band Independent tiering per bin; no cross-bin quantization coupling

Usage

Add to your Cargo.toml (workspace member or direct dependency):

[dependencies]
wifi-densepose-ruvector = { path = "../wifi-densepose-ruvector" }

Signal processing

use wifi_densepose_ruvector::signal::{
    mincut_subcarrier_partition,
    gate_spectrogram,
    attention_weighted_bvp,
    solve_fresnel_geometry,
};

// Partition 56 subcarriers by body-motion sensitivity.
let (sensitive, insensitive) = mincut_subcarrier_partition(&sensitivity_scores);

// Gate a 32×64 Doppler spectrogram (mild).
let gated = gate_spectrogram(&flat_spectrogram, 32, 64, 0.1);

// Aggregate 56 STFT rows into one BVP vector.
let bvp = attention_weighted_bvp(&stft_rows, &sensitivity_scores, 128);

// Solve TX-body / body-RX geometry from 5-subcarrier Fresnel observations.
if let Some((d1, d2)) = solve_fresnel_geometry(&observations, d_total) {
    println!("d1={d1:.2} m, d2={d2:.2} m");
}

MAT disaster detection

use wifi_densepose_ruvector::mat::{
    solve_triangulation,
    CompressedBreathingBuffer,
    CompressedHeartbeatSpectrogram,
};

// Localise a survivor from 4 TDoA measurements.
let pos = solve_triangulation(&tdoa_measurements, &ap_positions);

// Stream 6000 breathing frames at < 50% memory cost.
let mut buf = CompressedBreathingBuffer::new(56, zone_id);
for frame in frames {
    buf.push_frame(&frame);
}

// 128-bin heartbeat spectrogram with band-power extraction.
let mut hb = CompressedHeartbeatSpectrogram::new(128);
hb.push_column(&freq_column);
let cardiac_power = hb.band_power(10, 30); // ~0.82.0 Hz range

Memory Reduction

Breathing buffer for 56 subcarriers × 60 s × 100 Hz:

Tier Bits/value Size
Raw f32 32 13.4 MB
Hot (8-bit) 8 3.4 MB
Mixed hot/warm/cold 38 3.46.7 MB