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4 months ago

Compositional Human Pose Regression

Xiao Sun; Jiaxiang Shang; Shuang Liang; Yichen Wei

Compositional Human Pose Regression

Abstract

Regression based methods are not performing as well as detection based methods for human pose estimation. A central problem is that the structural information in the pose is not well exploited in the previous regression methods. In this work, we propose a structure-aware regression approach. It adopts a reparameterized pose representation using bones instead of joints. It exploits the joint connection structure to define a compositional loss function that encodes the long range interactions in the pose. It is simple, effective, and general for both 2D and 3D pose estimation in a unified setting. Comprehensive evaluation validates the effectiveness of our approach. It significantly advances the state-of-the-art on Human3.6M and is competitive with state-of-the-art results on MPII.

Code Repositories

anibali/h36m-fetch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-human-pose-estimation-on-human36mCHPR (H36M+MPII)
Average MPJPE (mm): 59.1
PA-MPJPE: 48.3
3d-human-pose-estimation-on-human36mCHPR
Average MPJPE (mm): 92.4
PA-MPJPE: 67.5
pose-estimation-on-mpii-human-poseCHPR
PCKh-0.5: 86.4

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Compositional Human Pose Regression | Papers | HyperAI