CVOct 15, 2022

mRI: Multi-modal 3D Human Pose Estimation Dataset using mmWave, RGB-D, and Inertial Sensors

arXiv:2210.08394v196 citationsh-index: 40
Originality Synthesis-oriented
AI Analysis

This dataset addresses a gap for researchers in pose estimation and multi-modal learning, specifically for home-based health monitoring applications, but it is incremental as it builds on existing sensor technologies.

The authors tackled the lack of multi-modal datasets for 3D human pose estimation in home-based health monitoring by introducing mRI, a dataset with over 160k synchronized frames from 20 subjects performing rehabilitation exercises, which supports benchmarks for pose estimation and action detection.

The ability to estimate 3D human body pose and movement, also known as human pose estimation (HPE), enables many applications for home-based health monitoring, such as remote rehabilitation training. Several possible solutions have emerged using sensors ranging from RGB cameras, depth sensors, millimeter-Wave (mmWave) radars, and wearable inertial sensors. Despite previous efforts on datasets and benchmarks for HPE, few dataset exploits multiple modalities and focuses on home-based health monitoring. To bridge the gap, we present mRI, a multi-modal 3D human pose estimation dataset with mmWave, RGB-D, and Inertial Sensors. Our dataset consists of over 160k synchronized frames from 20 subjects performing rehabilitation exercises and supports the benchmarks of HPE and action detection. We perform extensive experiments using our dataset and delineate the strength of each modality. We hope that the release of mRI can catalyze the research in pose estimation, multi-modal learning, and action understanding, and more importantly facilitate the applications of home-based health monitoring.

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