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Combining fractal hourglass network and skeleton joints pairwise affinity for multi-person pose estimation

机译:结合分形沙漏网络和骨架关节成对亲和力进行多人姿势估计

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摘要

Human pose estimation, especially multi-person pose estimation, is vital for understanding human abnormal behavior. In this paper, we develop a fractal hourglass model to automatically regress human body joints, and propose a layered double-way inference algorithm to calculate the affinity between neighboring skeleton joints. Firstly, the original hourglass resident unit was replaced and the candidate skeleton joints location heatmap regression process was described. And then, we determine the specific body joints location and optimize the regression results. Next, the double-way conditional probabilities between adjacent joints is defined as joints pairwise affinity, and is applied to match adjacent human body part. What's more, we adopt the spatial distance constraint to refine body joints matching result. Finally, we connect the best matching joints-pair, and iterate the process until all candidate joints are assigned into individual. Extensive experiments on the MPII multi-person subset and the COCO 2016 keypoints challenge show the effectiveness of our method, outperforming the second best method (Associative Embedding) by 0.45 and 1.20%.
机译:人体姿势估计,尤其是多人姿势估计,对于理解人类异常行为至关重要。在本文中,我们建立了一个分形沙漏模型来自动使人体关节退步,并提出了一种分层双向推理算法来计算相邻骨架关节之间的亲和力。首先,替换了原始的沙漏驻留单元,并描述了候选骨骼关节位置热图回归过程。然后,我们确定特定的人体关节位置并优化回归结果。接下来,将相邻关节之间的双向条件概率定义为关节对成对亲和力,并用于匹配相邻人体部位。此外,我们采用空间距离约束来细化人体关节的匹配结果。最后,我们连接最匹配的关节对,并重复该过程,直到将所有候选关节分配到单个关节中为止。在MPII多人子集和COCO 2016关键点挑战上进行的大量实验证明了我们方法的有效性,比第二好的方法(关联嵌入)高出0.45%和1.20%。

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