Joint-Motion Mutual Learning for Pose Estimation in Videos
Sifan Wu, Haipeng Chen, Yifang Yin, Sihao Hu, Runyang Feng, Yingying, Jiao, Ziqi Yang, Zhenguang Liu

TL;DR
This paper introduces a joint-motion mutual learning framework for video pose estimation that effectively combines local joint heatmap information with global motion dynamics, leading to improved accuracy on challenging benchmarks.
Contribution
It proposes a novel framework that synergistically integrates local joint features and global motion cues through mutual learning and an orthogonality objective.
Findings
Outperforms prior methods on three benchmarks.
Effectively leverages joint heatmaps and motion flow.
Improves pose estimation accuracy in complex scenes.
Abstract
Human pose estimation in videos has long been a compelling yet challenging task within the realm of computer vision. Nevertheless, this task remains difficult because of the complex video scenes, such as video defocus and self-occlusion. Recent methods strive to integrate multi-frame visual features generated by a backbone network for pose estimation. However, they often ignore the useful joint information encoded in the initial heatmap, which is a by-product of the backbone generation. Comparatively, methods that attempt to refine the initial heatmap fail to consider any spatio-temporal motion features. As a result, the performance of existing methods for pose estimation falls short due to the lack of ability to leverage both local joint (heatmap) information and global motion (feature) dynamics. To address this problem, we propose a novel joint-motion mutual learning framework for…
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Taxonomy
TopicsAdvanced Vision and Imaging · Human Pose and Action Recognition · Image Processing Techniques and Applications
MethodsHeatmap
