Self-Constrained Inference Optimization on Structural Groups for Human Pose Estimation
Zhehan Kan, Shuoshuo Chen, Zeng Li, Zhihai He

TL;DR
This paper introduces a self-constrained inference method leveraging structural correlations between human body keypoints to enhance pose estimation accuracy and robustness.
Contribution
It proposes a novel self-constrained prediction-verification network that models structural correlations and performs inference-time optimization for improved human pose estimation.
Findings
Significant performance improvements on MS COCO and CrowdPose datasets.
Effective verification mechanism for pose accuracy without ground truth.
Enhanced robustness in pose estimation through structural group modeling.
Abstract
We observe that human poses exhibit strong group-wise structural correlation and spatial coupling between keypoints due to the biological constraints of different body parts. This group-wise structural correlation can be explored to improve the accuracy and robustness of human pose estimation. In this work, we develop a self-constrained prediction-verification network to characterize and learn the structural correlation between keypoints during training. During the inference stage, the feedback information from the verification network allows us to perform further optimization of pose prediction, which significantly improves the performance of human pose estimation. Specifically, we partition the keypoints into groups according to the biological structure of human body. Within each group, the keypoints are further partitioned into two subsets, high-confidence base keypoints and…
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Taxonomy
TopicsHuman Pose and Action Recognition · Video Surveillance and Tracking Methods · Anomaly Detection Techniques and Applications
MethodsBalanced Selection
