论文标题

部分可观测时空混沌系统的无模型预测

Self-Constrained Inference Optimization on Structural Groups for Human Pose Estimation

论文作者

Kan, Zhehan, Chen, Shuoshuo, Li, Zeng, He, Zhihai

论文摘要

我们观察到,由于不同身体部位的生物学约束,人类姿势表现出强大的群体结构相关性和空间耦合。可以探索这种群体结构相关性,以提高人类姿势估计的准确性和鲁棒性。在这项工作中,我们开发了一个自我控制的预测验证网络,以表征和学习训练过程中关键点之间的结构相关性。在推论阶段,来自验证网络的反馈信息使我们能够进一步优化姿势预测,从而显着提高了人类姿势估计的性能。具体而言,我们根据人体的生物结构将关键点分组分组。在每个组中,关键点进一步分为两个子集,高信心基础关键点和低信心终端关键点。我们开发了一个自我约束的预测验证网络,以在这些关键点子集之间执行前向和向后的预测。姿势估计以及通用预测任务中的一个基本挑战是,由于无法获得地面真相,因此我们没有机制可以验证获得的姿势估计或预测结果是否准确。一旦成功学习,验证网络将用作前向姿势预测的准确性验证模块。在推论阶段,它可用于指导低保持信心关键点的姿势估计结果的局部优化,而高信任关键点的自由损失是目标函数。我们对基准MS可可和人群数据集的广泛实验结果表明,所提出的方法可以显着改善姿势估计结果。

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 low-confidence terminal keypoints. We develop a self-constrained prediction-verification network to perform forward and backward predictions between these keypoint subsets. One fundamental challenge in pose estimation, as well as in generic prediction tasks, is that there is no mechanism for us to verify if the obtained pose estimation or prediction results are accurate or not, since the ground truth is not available. Once successfully learned, the verification network serves as an accuracy verification module for the forward pose prediction. During the inference stage, it can be used to guide the local optimization of the pose estimation results of low-confidence keypoints with the self-constrained loss on high-confidence keypoints as the objective function. Our extensive experimental results on benchmark MS COCO and CrowdPose datasets demonstrate that the proposed method can significantly improve the pose estimation results.

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