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Real-Time, Adaptive, and Locality-Based Graph Partitioning Method for Video Scene Clustering

机译:用于视频场景聚类的实时,自适应和基于局部图的划分方法

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We propose in this paper an efficient, adaptive, and locality-based graph partitioning method for video scene clustering. First, a graph partitioning method is proposed to group video shots into scenes, and a peer-group filtering (PGF) scheme is used to identify all the shots similar to each particular shot based on Fisher's discriminant analysis. To work with computable shot similarity measures that have only limited discriminating power, we develop a graph partitioning scheme to cluster the shots by maximizing the likeness of shots within the same cluster and minimizing that between different clusters. Second, considering that video data are normally obtained and viewed sequentially, we propose to perform a locality-based PGF and graph partitioning on video segments with 50 shots, 100 shots, and so on. This proposed locality-based method has the advantage that the number of scene clusters is not required to be known a priori, and it can achieve performance comparable to that processing on the whole video sequence. Experimental results are presented to demonstrate the effectiveness and efficiency of the proposed method.
机译:在本文中,我们提出了一种用于视频场景聚类的高效,自适应和基于位置的图分区方法。首先,提出了一种图形划分方法,将视频镜头分为场景,并使用对等组过滤(PGF)方案,基于Fisher的判别分析来识别与每个特定镜头相似的所有镜头。为了使用仅具有有限辨别力的可计算镜头相似性度量,我们开发了一种图形分割方案,以通过最大化相同集群内镜头的相似度并最小化不同集群之间的镜头相似度来对镜头进行集群。其次,考虑到视频数据通常是按顺序获取和观看的,我们建议对具有50张照片,100张照片等的视频片段执行基于位置的PGF和图形分区。该提出的基于地点的方法具有以下优点:不需要事先知道场景簇的数量,并且它可以实现与整个视频序列上的处理相当的性能。实验结果表明该方法的有效性和有效性。

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