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Robust video mining based on local similarity alignment of motion trajectories

机译:基于运动轨迹局部相似度对齐的鲁棒视频挖掘

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Motion trajectory is one of the most important cues for extracting semantic information from video data. Numerous studies have focused on the analysis and comparison of the similarity among motion trajectories. Most of the previous methods rely on a global measure that does not account for partial or lost information. In particular, existing techniques fail to capture the salient features of local events shared by distinct motion trajectories. In this paper, we propose a novel local similarity alignment based method for retrieving similar motion events. Our approach is motivated by the well-known global sequence alignment and BLAST algorithms used in character string matching and genomic analysis. The proposed local similarity alignment measure focuses on key segments of motion trajectories and thus yields superior computational speed while providing improved performance, especially in the presence of missing information. We conduct extensive computer simulations that demonstrate the superiority of the proposed approach in terms of its efficiency and computational speed. Moreover, we highlight the robustness of the proposed local similarity alignment method to information loss (e.g. due to occlusion) by demonstrating its performance for partial motion trajectories.
机译:运动轨迹是从视频数据中提取语义信息的最重要线索之一。许多研究集中于分析和比较运动轨迹之间的相似性。先前的大多数方法都依赖于不考虑部分信息或丢失信息的全局度量。特别地,现有技术无法捕获由不同运动轨迹共享的局部事件的显着特征。在本文中,我们提出了一种新颖的基于局部相似度比对的相似运动事件检索方法。我们的方法受到字符串匹配和基因组分析中使用的众所周知的全局序列比对和BLAST算法的启发。拟议的局部相似性对齐措施集中于运动轨迹的关键部分,因此在提供改进的性能的同时,尤其是在缺少信息的情况下,可提供更高的计算速度。我们进行了广泛的计算机仿真,从效率和计算速度上证明了该方法的优越性。此外,我们通过展示局部运动轨迹的性能来突出所提出的局部相似性对准方法对信息丢失(例如由于遮挡)的鲁棒性。

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