license: cc-by-nc-sa-4.0
size_categories:
- 1K<n<10K
RT-Pose: A 4D Radar Tensor-based 3D Human Pose Estimation and Localization Benchmark (ECCV 2024)
RT-Pose introduces a human pose estimation (HPE) dataset and benchmark by integrating a unique combination of calibrated 4D radar tensors, RGB images, and LiDAR point clouds. This integration marks a significant advancement in studying human pose analysis through multi-modality datasets.
Dataset Details
Dataset Description
Sensors
The data collection hardware system comprises two RGB cameras, a non-repetitive horizontal scanning LiDAR, and a cascade imaging radar module.
Data Statics
We collect the dataset in 40 scenes with indoor and outdoor environments.
The dataset comprises 72,000 frames distributed across 240 sequences. The structured organization ensures a realistic distribution of human motions, which is crucial for robust analysis and model training.
Please check the paper for more details.
- Curated by: Yuan-Hao Ho (n28081527@gs.ncku.edu.tw), Jen-Hao(Andy) Cheng(andyhci@uw.edu) from Information Processing Lab at University of Washington
- License: CC BY-NC-SA
Dataset Sources
- Repository including data processing and baseline method codes: RT-POSE
- Paper: To be viewed on arxiv.
Uses
- Download the dataset from Hugging Face (Total data size: ~1.2 TB)
- Follow the data processing tool to process radar ADC samples into radar tensors. (Total data size of the downloaded data and saved radar tensors: ~41 TB)
- Check the data loading and baseline method's training and testing codes in the same repo RT-POSE
Citation
BibTeX:
To appear on arxiv
Dataset Card Contact
Jen-Hao (Andy) Cheng, andyhci@uw.edu