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3 months ago

VoxelPose: Towards Multi-Camera 3D Human Pose Estimation in Wild Environment

Hanyue Tu Chunyu Wang Wenjun Zeng

VoxelPose: Towards Multi-Camera 3D Human Pose Estimation in Wild Environment

Abstract

We present an approach to estimate 3D poses of multiple people from multiple camera views. In contrast to the previous efforts which require to establish cross-view correspondence based on noisy and incomplete 2D pose estimations, we present an end-to-end solution which directly operates in the $3$D space, therefore avoids making incorrect decisions in the 2D space. To achieve this goal, the features in all camera views are warped and aggregated in a common 3D space, and fed into Cuboid Proposal Network (CPN) to coarsely localize all people. Then we propose Pose Regression Network (PRN) to estimate a detailed 3D pose for each proposal. The approach is robust to occlusion which occurs frequently in practice. Without bells and whistles, it outperforms the state-of-the-arts on the public datasets. Code will be released at https://github.com/microsoft/multiperson-pose-estimation-pytorch.

Code Repositories

microsoft/voxelpose-pytorch
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-multi-person-pose-estimation-on-campusVoxelPose
PCP3D: 96.7
3d-multi-person-pose-estimation-on-cmuVoxelPose
Average MPJPE (mm): 17.68
3d-multi-person-pose-estimation-on-shelfVoxelPose
PCP3D: 97

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