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Papers/Lightweight Multi-person Total Motion Capture Using Sparse...

Lightweight Multi-person Total Motion Capture Using Sparse Multi-view Cameras

Yuxiang Zhang, Zhe Li, Liang An, Mengcheng Li, Tao Yu, Yebin Liu

2021-08-23ICCV 2021 103D Multi-Person Pose Estimation
PaperPDF

Abstract

Multi-person total motion capture is extremely challenging when it comes to handle severe occlusions, different reconstruction granularities from body to face and hands, drastically changing observation scales and fast body movements. To overcome these challenges above, we contribute a lightweight total motion capture system for multi-person interactive scenarios using only sparse multi-view cameras. By contributing a novel hand and face bootstrapping algorithm, our method is capable of efficient localization and accurate association of the hands and faces even on severe occluded occasions. We leverage both pose regression and keypoints detection methods and further propose a unified two-stage parametric fitting method for achieving pixel-aligned accuracy. Moreover, for extremely self-occluded poses and close interactions, a novel feedback mechanism is proposed to propagate the pixel-aligned reconstructions into the next frame for more accurate association. Overall, we propose the first light-weight total capture system and achieves fast, robust and accurate multi-person total motion capture performance. The results and experiments show that our method achieves more accurate results than existing methods under sparse-view setups.

Results

TaskDatasetMetricValueModel
3D Human Pose EstimationShelfPCP3D98.1Zhang et al.
Pose EstimationShelfPCP3D98.1Zhang et al.
3DShelfPCP3D98.1Zhang et al.
3D Multi-Person Pose EstimationShelfPCP3D98.1Zhang et al.
1 Image, 2*2 StitchiShelfPCP3D98.1Zhang et al.

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