基于时间扭曲投票的hough动作检测

Kensho Hara, K. Mase
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引用次数: 0

摘要

基于hough的动作检测方法根据给定视频序列的局部时空特征对动作类别和位置进行加权投票。传统的基于hough的方法对于具有时间变化的动作表现不佳,因为这种变化改变了局部特征位置与全局动作位置之间的时间关系。由于这些差异,一些选票可能会分散。在本文中,我们提出了一种通过选票的时间扭曲来集中分散选票的方法。该方法基于传统的基于hough的方法产生的选票计算分散投票位置与集中投票位置之间的偏移量。偏移量扭曲了分散的选票,使它们集中起来,即使在存在时间变化的情况下,也提供了一种鲁棒性方法。实验证明,与传统方法相比,该方法提高了UT-Interaction数据集的平均精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hough-based action detection with time-warped voting
Hough-based action detection methods cast weighted votes for action classes and positions based on the local spatio-temporal features of the given video sequences. Conventional Hough-based methods perform poorly for actions with temporal variations because such variations change the temporal relation between the local feature positions and the global action positions. Some votes may scatter because of such variations. In this paper, we propose a method for concentrating scattered votes through a time warping of the votes. The proposed method calculates the offsets between the scattered voting positions and the concentrated positions based on the votes generated through the conventional Hough-based method. The offsets warp the scattered votes to concentrate them, and provide a method of robustness even in the presence of temporal variations. We experimentally confirmed that the proposed method improves the average precision for the UT-Interaction dataset compared with a conventional method.
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