CVMar 29, 2025

FRAME: Floor-aligned Representation for Avatar Motion from Egocentric Video

arXiv:2503.23094v14 citationsh-index: 33CVPR
Originality Incremental advance
AI Analysis

This addresses motion capture challenges for VR/AR developers, offering improved real-world performance, though it is incremental as it builds on existing methods with novel data and integration.

The paper tackles the problem of egocentric motion capture for VR/AR applications by introducing a lightweight VR-based data collection setup and a multimodal architecture called FRAME, achieving state-of-the-art body pose prediction at 300 FPS with high-quality results free from common artifacts.

Egocentric motion capture with a head-mounted body-facing stereo camera is crucial for VR and AR applications but presents significant challenges such as heavy occlusions and limited annotated real-world data. Existing methods rely on synthetic pretraining and struggle to generate smooth and accurate predictions in real-world settings, particularly for lower limbs. Our work addresses these limitations by introducing a lightweight VR-based data collection setup with on-board, real-time 6D pose tracking. Using this setup, we collected the most extensive real-world dataset for ego-facing ego-mounted cameras to date in size and motion variability. Effectively integrating this multimodal input -- device pose and camera feeds -- is challenging due to the differing characteristics of each data source. To address this, we propose FRAME, a simple yet effective architecture that combines device pose and camera feeds for state-of-the-art body pose prediction through geometrically sound multimodal integration and can run at 300 FPS on modern hardware. Lastly, we showcase a novel training strategy to enhance the model's generalization capabilities. Our approach exploits the problem's geometric properties, yielding high-quality motion capture free from common artifacts in prior works. Qualitative and quantitative evaluations, along with extensive comparisons, demonstrate the effectiveness of our method. Data, code, and CAD designs will be available at https://vcai.mpi-inf.mpg.de/projects/FRAME/

Foundations

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