A new method using moments correlation for action change detection in videos

I. Lassoued, E. Zagrouba, Y. Chahir
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引用次数: 1

Abstract

Automated characterization of human actions plays an important role in video indexing and retrieval for many applications. Action change detection is considered among the most necessary element to ensure a good video description. However, it is quite challenging to achieve detection without prior knowledge or training. Usually humans are practicing different actions in the same video and their silhouettes give significant information for characterizing human poses in each video frame. We have developed an approach based on pose descriptors of these silhouettes, cross correlations matrices and Kullback-Leibler distance to detect action changes. In this paper, we will focus firstly on the specific problem of change detection in videos. After that, the proposed approach for action change detection will be detailed and tested on Weizman dataset. Finally, experimental results has been analyzed and showed the good performance of our approach.
一种基于矩相关的视频动作变化检测新方法
在许多应用中,人类行为的自动表征在视频索引和检索中起着重要作用。动作变化检测被认为是确保良好视频描述的最必要元素之一。然而,在没有事先知识或培训的情况下实现检测是相当具有挑战性的。通常,人类在同一视频中练习不同的动作,他们的剪影为每个视频帧中人类姿势的特征提供了重要信息。我们开发了一种基于这些轮廓的姿态描述符、相互关联矩阵和Kullback-Leibler距离来检测动作变化的方法。在本文中,我们将首先关注视频中变化检测的具体问题。在此基础上,对所提出的动作变化检测方法进行详细分析,并在Weizman数据集上进行测试。最后对实验结果进行了分析,证明了该方法的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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