首页> 外文会议>ICIAP 2011;International conference on image analysis and processing >Sorting Atomic Activities for Discovering Spatio-temporal Patterns in Dynamic Scenes
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Sorting Atomic Activities for Discovering Spatio-temporal Patterns in Dynamic Scenes

机译:排序原子活动以发现动态场景中的时空模式

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We present a novel non-object centric approach for discovering activity patterns in dynamic scenes. We build on previous works on video scene understanding. We first compute simple visual cues and individuate elementary activities. Then we divide the video into clips, compute clip histograms and cluster them to discover spatio-temporal patterns. A recently proposed clustering algorithm, which uses as objective function the Earth Mover's Distance (EMD), is adopted. In this way the similarity among elementary activities is taken into account. This paper presents three crucial improvements with respect to previous works: (i) we consider a variant of EMD with a robust ground distance, (ii) clips are represented with circular histograms and an optimal bin order, reflecting the atomic activities'similarity, is automatically computed, (iii) the temporal dynamics of elementary activities is considered when clustering clips. Experimental results on publicly available datasets show that our method compares favorably with state-of-the-art approaches.
机译:我们提出了一种新颖的以非对象为中心的方法来发现动态场景中的活动模式。我们以先前有关视频场景理解的工作为基础。我们首先计算简单的视觉提示并进行基本活动。然后,我们将视频划分为片段,计算片段直方图并将它们聚类以发现时空模式。采用了最近提出的聚类算法,该算法将地球移动者的距离(EMD)用作目标函数。这样,可以考虑基本活动之间的相似性。本文介绍了相对于先前工作的三个关键改进:(i)我们考虑了EMD的一种变体,该EMD具有可靠的地面距离;(ii)片段用圆形直方图表示,并且最佳bin阶反映了原子活动的相似性, (iii)在对片段进行聚类时,应考虑基本活动的时间动态。在公开数据集上的实验结果表明,我们的方法与最新方法相比具有优势。

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