CUHK-X — Small Model Track
Multimodal human action recognition (classification).
Given a multimodal clip, predict its action class (action_id, 0–39, 40 classes).
Repository layout
.
├── Training/
│ ├── class_mapping.csv # action_id <-> action_name (40 classes)
│ └── data/
│ └── HAR.z01 … HAR.z08 + HAR.zip # multi-volume zip
│ → HAR/data/<modality>/<action>/<user>/<trial>/<files>
└── Testing/
├── data/
│ └── small_model_track_test.zip → small_model_track_test/<id>/<modality>/<files>
└── test_file/
├── test.csv # path + empty `prediction` (to fill)
└── sample_submission.csv # submission example
Labels
- Training labels live in the path: in
HAR/data/<modality>/<action>/<user>/<trial>, the<action>(e.g.0_Wash_face) is the class. - Convert between
action_nameandaction_idwithclass_mapping.csv. - Test clips are anonymized (
SM_test_XXXX); predict theiraction_id.
Modalities (6; no RGB, no raw Depth)
| Modality | Type | Example file |
|---|---|---|
Depth_Color |
colorized depth (frames) | Depth_<datetime>_<idx>_Color.png |
IR |
infrared (frames) | IR_<datetime>_<idx>.png |
Thermal |
thermal (frames) | frame_000063.jpg |
IMU |
inertial sensor | *.csv |
Radar |
mmWave radar | radar_output_T<ts>.csv |
Skeleton |
skeleton | pose data +visualizations/ |
Sampling rates differ across modalities; not every clip has every modality.
Extracting the data
Training is a multi-volume zip (HAR.z01…HAR.z08 + HAR.zip; keep all volumes in one folder):
cd Training/data
zip -s 0 HAR.zip --out HAR_full.zip # merge volumes (zip 3.0+)
unzip HAR_full.zip # -> HAR/data/<modality>/<action>/<user>/<trial>/...
7-Zip / WinRAR / double-click also handle split zips. Test set:
cd Testing/data && unzip small_model_track_test.zip # -> small_model_track_test/<id>/<modality>/...
Submission
In Testing/test_file/test.csv, fill each row's prediction with the predicted action_id (0–39).
See sample_submission.csv for the format.
Statistics
- 40 action classes
- 405 test clips
Quick start
import csv
id2name = {r["action_id"]: r["action_name"]
for r in csv.DictReader(open("Training/class_mapping.csv", encoding="utf-8-sig"))}
# Training: the <action> folder in the path is the label, e.g.
# HAR/data/IR/0_Wash_face/user10/4-2-1/ -> action_name="0_Wash_face", action_id="0"
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