论文标题

2D人姿势估计具有明确的解剖关键点结构约束

2D Human Pose Estimation with Explicit Anatomical Keypoints Structure Constraints

论文作者

Ji, Zhangjian, Wang, Zilong, Zhang, Ming, Chen, Yapeng, Qian, Yuhua

论文摘要

最近,人类的姿势估计主要集中于如何将更有效,更深层的网络结构作为人体提取器设计,而大多数设计的功能提取网络仅引入每个解剖关键点的位置来指导其训练过程。但是,我们发现一些人类解剖关键保持其拓扑不变性,在检测功能图上的关键点时,可以帮助更准确地定位它们。但是据我们所知,没有任何文献专门研究它。因此,在本文中,我们提出了一种具有明确的解剖关键结构约束的新型2D人类姿势估计方法,该方法引入了拓扑约束项,即由关键点对按键点的距离和方向之间的差异及其在损失对象中的地面图之间的差异。更重要的是,我们提出的模型可以插入最自下而上或自上而下的人姿势估计方法并提高其性能。基准数据集上的广泛实验:可可键点数据集,表明我们的方法对最自下而上和自上而下的人类姿势估计方法有利,尤其是对于Lite-Hrnet,当我们的模型被插入其中时,其AP SCORE分别在COCO VEL2017和Test Datains上分别提高了2.9 \%和3.3 \%。

Recently, human pose estimation mainly focuses on how to design a more effective and better deep network structure as human features extractor, and most designed feature extraction networks only introduce the position of each anatomical keypoint to guide their training process. However, we found that some human anatomical keypoints kept their topology invariance, which can help to localize them more accurately when detecting the keypoints on the feature map. But to the best of our knowledge, there is no literature that has specifically studied it. Thus, in this paper, we present a novel 2D human pose estimation method with explicit anatomical keypoints structure constraints, which introduces the topology constraint term that consisting of the differences between the distance and direction of the keypoint-to-keypoint and their groundtruth in the loss object. More importantly, our proposed model can be plugged in the most existing bottom-up or top-down human pose estimation methods and improve their performance. The extensive experiments on the benchmark dataset: COCO keypoint dataset, show that our methods perform favorably against the most existing bottom-up and top-down human pose estimation methods, especially for Lite-HRNet, when our model is plugged into it, its AP scores separately raise by 2.9\% and 3.3\% on COCO val2017 and test-dev2017 datasets.

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