Corrects MM-Fi antenna config (1 TX / 3 RX not 3x3), adds Wi-Pose as secondary dataset (exact 3x3 hardware match), updates subcarrier compatibility table, promotes status to Accepted, adds proof verification protocol and Rust implementation plan. https://claude.ai/code/session_01BSBAQJ34SLkiJy4A8SoiL4
8.8 KiB
ADR-015: Public Dataset Strategy for Trained Pose Estimation Model
Status
Accepted
Context
The WiFi-DensePose system has a complete model architecture (DensePoseHead,
ModalityTranslationNetwork, WiFiDensePoseRCNN) and signal processing pipeline,
but no trained weights. Without a trained model, pose estimation produces random
outputs regardless of input quality.
Training requires paired data: simultaneous WiFi CSI captures alongside ground-truth human pose annotations. Collecting this data from scratch requires months of effort and specialized hardware (multiple WiFi nodes + camera + motion capture rig). Several public datasets exist that can bootstrap training without custom collection.
The Teacher-Student Constraint
The CMU "DensePose From WiFi" paper (2023) trains using a teacher-student approach: a camera-based RGB pose model (e.g. Detectron2 DensePose) generates pseudo-labels during training, so the WiFi model learns to replicate those outputs. At inference, the camera is removed. This means any dataset that provides either ground-truth pose annotations or synchronized RGB frames (from which a teacher can generate labels) is sufficient for training.
56-Subcarrier Hardware Context
The system targets 56 subcarriers, which corresponds specifically to Atheros 802.11n chipsets on a 20 MHz channel using the Atheros CSI Tool. No publicly available dataset with paired pose annotations was collected at exactly 56 subcarriers:
| Hardware | Subcarriers | Datasets |
|---|---|---|
| Atheros CSI Tool (20 MHz) | 56 | None with pose labels |
| Atheros CSI Tool (40 MHz) | 114 | MM-Fi |
| Intel 5300 NIC (20 MHz) | 30 | Person-in-WiFi, Widar 3.0, Wi-Pose, XRF55 |
| Nexmon/Broadcom (80 MHz) | 242-256 | None with pose labels |
MM-Fi uses the same Atheros hardware family at 40 MHz, making 114→56 interpolation physically meaningful (same chipset, different channel width).
Decision
Use MM-Fi as the primary training dataset, supplemented by Wi-Pose (NjtechCVLab) for additional diversity. XRF55 is downgraded to optional (Kinect labels need post-processing). Teacher-student pipeline fills in DensePose UV labels where only skeleton keypoints are available.
Primary Dataset: MM-Fi
Paper: "MM-Fi: Multi-Modal Non-Intrusive 4D Human Dataset for Versatile Wireless
Sensing" (NeurIPS 2023 Datasets & Benchmarks)
Repository: https://github.com/ybhbingo/MMFi_dataset
Size: 40 subjects × 27 action classes × ~320,000 frames, 4 environments
Modalities: WiFi CSI, mmWave radar, LiDAR, RGB-D, IMU
CSI format: 1 TX × 3 RX antennas, 114 subcarriers, 100 Hz sampling rate,
5 GHz 40 MHz (TP-Link N750 with Atheros CSI Tool), raw amplitude + phase
Data tensor: [3, 114, 10] per sample (antenna-pairs × subcarriers × time frames)
Pose annotations: 17-keypoint COCO skeleton in 3D + DensePose UV surface coords
License: CC BY-NC 4.0
Why primary: Largest public WiFi CSI + pose dataset; richest annotations (3D
keypoints + DensePose UV); same Atheros hardware family as target system; COCO
keypoints map directly to the KeypointHead output format; actively maintained
with NeurIPS 2023 benchmark status.
Antenna correction: MM-Fi uses 1 TX / 3 RX (3 antenna pairs), not 3×3. The existing system targets 3×3 (ESP32 mesh). The 3 RX antennas match; the TX difference means MM-Fi-trained weights will work but may benefit from fine-tuning on data from a 3-TX setup.
Secondary Dataset: Wi-Pose (NjtechCVLab)
Paper: CSI-Former (MDPI Entropy 2023) and related works Repository: https://github.com/NjtechCVLab/Wi-PoseDataset Size: 12 volunteers × 12 action classes × 166,600 packets CSI format: 3 TX × 3 RX antennas, 30 subcarriers, 5 GHz, .mat format Pose annotations: 18-keypoint AlphaPose skeleton (COCO-compatible subset) License: Research use Why secondary: 3×3 antenna array matches target ESP32 mesh hardware exactly; fully public; adds 12 different subjects and environments not in MM-Fi. Note: 30 subcarriers require zero-padding or interpolation to 56; 18→17 keypoint mapping drops one neck keypoint (index 1), compatible with COCO-17.
Excluded / Deprioritized Datasets
| Dataset | Reason |
|---|---|
| RF-Pose / RF-Pose3D (MIT) | Custom FMCW radio, not 802.11n CSI; incompatible signal physics |
| Person-in-WiFi (CMU 2019) | Not publicly released (IRB restriction) |
| Person-in-WiFi 3D (CVPR 2024) | 30 subcarriers, Intel 5300; semi-public access |
| DensePose From WiFi (CMU) | Dataset not released; only paper + architecture |
| Widar 3.0 | Gesture labels only, no full-body pose keypoints |
| XRF55 | Activity labels primarily; Kinect pose requires email request; lower priority |
| UT-HAR, WiAR, SignFi | Activity/gesture labels only, no pose keypoints |
Implementation Plan
Phase 1: MM-Fi Loader (Rust wifi-densepose-train crate)
Implement MmFiDataset in Rust (crates/wifi-densepose-train/src/dataset.rs):
- Reads MM-Fi numpy .npy files: amplitude [N, 3, 3, 114] (antenna-pairs laid flat), phase [N, 3, 3, 114]
- Resamples from 114 → 56 subcarriers (linear interpolation via
subcarrier.rs) - Applies phase sanitization using SOTA algorithms from
wifi-densepose-signalcrate - Returns typed
CsiSamplestructs with amplitude, phase, keypoints, visibility - Validation split: subjects 33–40 held out
Phase 2: Wi-Pose Loader
Implement WiPoseDataset reading .mat files (via ndarray-based MATLAB reader or
pre-converted .npy). Subcarrier interpolation: 30 → 56 (zero-pad high frequencies
rather than interpolate, since 30-sub Intel data has different spectral occupancy
than 56-sub Atheros data).
Phase 3: Teacher-Student DensePose Labels
For MM-Fi samples that provide 3D keypoints but not full DensePose UV maps:
- Run Detectron2 DensePose on paired RGB frames to generate
(part_labels, u_coords, v_coords) - Cache generated labels as .npy alongside original data
- This matches the training procedure in the CMU paper exactly
Phase 4: Training Pipeline (Rust)
- Model:
WiFiDensePoseModel(tch-rs,crates/wifi-densepose-train/src/model.rs) - Loss: Keypoint heatmap (MSE) + DensePose part (cross-entropy) + UV (Smooth L1) + transfer (MSE)
- Metrics: PCK@0.2 + OKS with Hungarian min-cost assignment (
crates/wifi-densepose-train/src/metrics.rs) - Optimizer: Adam, lr=1e-3, step decay at epochs 40 and 80
- Hardware: Single GPU (RTX 3090 or A100); MM-Fi fits in ~50 GB disk
- Checkpointing: Save every epoch; keep best-by-validation-PCK
Phase 5: Proof Verification
verify-training binary provides the "trust kill switch" for training:
- Fixed seed (MODEL_SEED=0, PROOF_SEED=42)
- 50 training steps on deterministic SyntheticDataset
- Verifies: loss decreases + SHA-256 of final weights matches stored hash
- EXIT 0 = PASS, EXIT 1 = FAIL, EXIT 2 = SKIP (no stored hash)
Subcarrier Mismatch: MM-Fi (114) vs System (56)
MM-Fi captures 114 subcarriers at 5 GHz with 40 MHz bandwidth (Atheros CSI Tool). The system is configured for 56 subcarriers (Atheros, 20 MHz). Resolution options:
- Interpolate MM-Fi → 56 (chosen for Phase 1): linear interpolation preserves spectral envelope, fast, no architecture change needed
- Train at native 114: change
CSIProcessorconfig; requires re-runningverify.py --generate-hashto update proof hash; future option - Collect native 56-sub data: ESP32 mesh at 20 MHz; best for production
Option 1 unblocks training immediately. The Rust subcarrier.rs module handles
interpolation as a first-class operation with tests proving correctness.
Consequences
Positive:
- Unblocks end-to-end training on real public data immediately
- MM-Fi's Atheros hardware family matches target system (same CSI Tool)
- 40 subjects × 27 actions provides reasonable diversity for first model
- Wi-Pose's 3×3 antenna setup is an exact hardware match for ESP32 mesh
- CC BY-NC license is compatible with research and internal use
- Rust implementation integrates natively with
wifi-densepose-signalpipeline
Negative:
- CC BY-NC prohibits commercial deployment of weights trained solely on MM-Fi; custom data collection required before commercial release
- MM-Fi is 1 TX / 3 RX; system targets 3 TX / 3 RX; fine-tuning needed
- 114→56 subcarrier interpolation loses frequency resolution; acceptable for v1
- MM-Fi captured in controlled lab environments; real-world accuracy will be lower until fine-tuned on domain-specific data
References
- Yang et al., "MM-Fi: Multi-Modal Non-Intrusive 4D Human Dataset" (NeurIPS 2023) — arXiv:2305.10345
- Geng et al., "DensePose From WiFi" (CMU, arXiv:2301.00250, 2023)
- Yan et al., "Person-in-WiFi 3D" (CVPR 2024)
- NjtechCVLab, "Wi-Pose Dataset" — github.com/NjtechCVLab/Wi-PoseDataset
- ADR-012: ESP32 CSI Sensor Mesh (hardware target)
- ADR-013: Feature-Level Sensing on Commodity Gear
- ADR-014: SOTA Signal Processing Algorithms