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Papers/HMOR: Hierarchical Multi-Person Ordinal Relations for Mono...

HMOR: Hierarchical Multi-Person Ordinal Relations for Monocular Multi-Person 3D Pose Estimation

Jiefeng Li, Can Wang, Wentao Liu, Chen Qian, Cewu Lu

2020-08-01ECCV 2020 83D Human Pose EstimationPose EstimationDepth Estimation3D Multi-Person Pose Estimation (root-relative)3D Multi-Person Pose Estimation (absolute)3D Pose Estimation3D Multi-Person Pose Estimation
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Abstract

Remarkable progress has been made in 3D human pose estimation from a monocular RGB camera. However, only a few studies explored 3D multi-person cases. In this paper, we attempt to address the lack of a global perspective of the top-down approaches by introducing a novel form of supervision - Hierarchical Multi-person Ordinal Relations (HMOR). The HMOR encodes interaction information as the ordinal relations of depths and angles hierarchically, which captures the body-part and joint level semantic and maintains global consistency at the same time. In our approach, an integrated top-down model is designed to leverage these ordinal relations in the learning process. The integrated model estimates human bounding boxes, human depths, and root-relative 3D poses simultaneously, with a coarse-to-fine architecture to improve the accuracy of depth estimation. The proposed method significantly outperforms state-of-the-art methods on publicly available multi-person 3D pose datasets. In addition to superior performance, our method costs lower computation complexity and fewer model parameters.

Results

TaskDatasetMetricValueModel
3D Multi-Person Pose Estimation (root-relative)MuPoTS-3D3DPCK82HMOR
3D Human Pose EstimationPanopticAverage MPJPE (mm)51.6HMOR
3D Human Pose EstimationMuPoTS-3D3DPCK43.8HMOR
3D Human Pose EstimationMuPoTS-3D3DPCK82HMOR
3D Multi-Person Pose Estimation (absolute)MuPoTS-3D3DPCK43.8HMOR
Pose EstimationPanopticAverage MPJPE (mm)51.6HMOR
Pose EstimationMuPoTS-3D3DPCK43.8HMOR
Pose EstimationMuPoTS-3D3DPCK82HMOR
3DPanopticAverage MPJPE (mm)51.6HMOR
3DMuPoTS-3D3DPCK43.8HMOR
3DMuPoTS-3D3DPCK82HMOR
3D Multi-Person Pose EstimationPanopticAverage MPJPE (mm)51.6HMOR
3D Multi-Person Pose EstimationMuPoTS-3D3DPCK43.8HMOR
3D Multi-Person Pose EstimationMuPoTS-3D3DPCK82HMOR
1 Image, 2*2 StitchiPanopticAverage MPJPE (mm)51.6HMOR
1 Image, 2*2 StitchiMuPoTS-3D3DPCK43.8HMOR
1 Image, 2*2 StitchiMuPoTS-3D3DPCK82HMOR

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