Recognising action as clouds of space-time interest points

Matteo Bregonzio, S. Gong, T. Xiang
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引用次数: 415

Abstract

Much of recent action recognition research is based on space-time interest points extracted from video using a Bag of Words (BOW) representation. It mainly relies on the discriminative power of individual local space-time descriptors, whilst ignoring potentially valuable information about the global spatio-temporal distribution of interest points. In this paper, we propose a novel action recognition approach which differs significantly from previous interest points based approaches in that only the global spatiotemporal distribution of the interest points are exploited. This is achieved through extracting holistic features from clouds of interest points accumulated over multiple temporal scales followed by automatic feature selection. Our approach avoids the non-trivial problems of selecting the optimal space-time descriptor, clustering algorithm for constructing a codebook, and selecting codebook size faced by previous interest points based methods. Our model is able to capture smooth motions, robust to view changes and occlusions at a low computation cost. Experiments using the KTH and WEIZMANN datasets demonstrate that our approach outperforms most existing methods.
将行动识别为时空兴趣点的云
最近的许多动作识别研究都是基于使用单词袋(BOW)表示从视频中提取时空兴趣点。它主要依赖于单个局部时空描述符的判别能力,而忽略了兴趣点的全球时空分布的潜在有价值的信息。在本文中,我们提出了一种新的动作识别方法,它与以往基于兴趣点的方法有很大的不同,因为它只利用了兴趣点的全局时空分布。这是通过从多个时间尺度上积累的兴趣点云中提取整体特征,然后进行自动特征选择来实现的。我们的方法避免了以往基于兴趣点的方法所面临的选择最优时空描述符、构建码本的聚类算法和选择码本大小等重要问题。我们的模型能够以较低的计算成本捕获平滑的运动,对视图变化和遮挡具有鲁棒性。使用KTH和WEIZMANN数据集的实验表明,我们的方法优于大多数现有方法。
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