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Human Interaction Recognition by Motion Decoupling

机译:运动解耦的人机交互识别

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Human Action Recognition (HAR) has centered the interest of much research in the last years. Most of this interest has been focused on recognizing motion behavior from a single person (run, jump, walk, hand-wave, etc). However, Human Interaction Recognition (HIR) focus on those cases where several people participate in the scene but the action is carried out only by some of them. The HIR-task is a harder problem than the HAR-task and heretofore very modest scores have been achieved on realistic scenarios. In this paper, we present a new approach to the HIR-task from decoupling the camera and subject motion and using SVM multiple instance learning classifiers. In addition, the pyramidal PaHOF descriptor proposed in the HAR-task context has been adapted. Experimental results on the very challenging TV Human Interactions Dataset [12] are shown, supporting the validity of the proposed approach.
机译:近年来,人类动作识别(HAR)引起了很多研究的兴趣。大多数兴趣集中在识别单个人的运动行为(奔跑,跳跃,步行,手挥等)上。但是,人机交互识别(HIR)专注于几个人参与场景但仅由其中一些人执行动作的情况。与HAR任务相比,HIR任务是一个更困难的问题,并且迄今为止,在现实情况下已经获得了非常适度的分数。在本文中,我们提出了一种新的方法来实现HIR任务,方法是将摄像机和主体运动解耦,并使用SVM多实例学习分类器。另外,已经修改了在HAR任务上下文中提出的金字塔形PaHOF描述符。显示了极富挑战性的电视人际互动数据集[12]的实验结果,证明了所提出方法的有效性。

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