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Recognizing Interaction Between Human Performers Using 'Key Pose Doublet'

机译:使用“关键姿势双峰”识别人类执行者之间的互动

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In this paper, we propose a graph theoretic approach for recognizing interactions between two human performers present in a video clip. We watch primarily the human poses of each performer and derive descriptors that capture the motion patterns of the poses. From an initial dictionary of poses (visual words), we extract key poses (or key words) by ranking the poses on the centrality measure of graph connectivity. We argue that the key poses are graph nodes which share a close semantic relationship (in terms of some suitable edge weight function) with all other pose nodes and hence are said to be the central part of the graph. We apply the same centrality measure on all possible combinations of the key poses of the two performers to select the set of 'key pose doublets' that best represent the corresponding action. The results on standard interaction recognition dataset show the robustness of our approach when compared to the present state of the art method.
机译:在本文中,我们提出了一种图形理论方法,用于识别出现在视频剪辑中的两个人类执行者之间的交互。我们主要观看每个执行者的人类姿势和捕获姿势的运动模式的推导描述符。根据姿势的初始词典(视觉单词),通过在图形连接的中心度量上排列姿势来提取密钥姿势(或关键词)。我们认为关键姿势是与所有其他姿势节点共享一个接近语义关系的图表节点(就某些合适的边缘重量函数),并且因此据说是图形的中心部分。我们对两位执行者的关键姿势的所有可能组合应用相同的中心度量,以选择最能代表相应动作的“键姿态双重”组。标准相互作用识别数据集的结果显示了与本领域现有状态相比的方法的鲁棒性。

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