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Online video scene clustering by competitive incremental NMF - Springer

机译:通过竞争性增量NMF进行在线视频场景聚类-Springer

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摘要

Efficient clustering and categorizing of video are becoming more and more vital in various applications including video summarization, content-based representation and so on. The large volume of video data is the biggest challenge that this task presents, for most the clustering techniques suffer from high dimensional data in terms of both accuracy and efficiency. In addition to this, most video applications require online processing; therefore, clustering should also be done online for such tasks. This paper presents an online video scene clustering/segmentation method that is based on incremental nonnegative matrix factorization (INMF), which has been shown to be a powerful content representation tool for high dimensional data. The proposed algorithm (Comp-INMF) enables online representation of video content and increases efficiency significantly by integrating a competitive learning scheme into INMF. It brings a systematic solution to the issue of rank selection in nonnegative matrix factorization, which is equivalent to specifying the number of clusters. The clustering performance is evaluated by tests on TRECVID video sequences, and a performance comparison to baseline methods including Adaptive Resonance Theory (ART) is provided in order to demonstrate the efficiency and efficacy of the proposed video clustering scheme. Clustering performance reported in terms of recall, precision and F1 measures shows that the labeling accuracy of the algorithm is notable, especially at edit effect regions that constitute a challenging point in video analysis.
机译:在包括视频摘要,基于内容的表示等各种应用中,视频的有效聚类和分类变得越来越重要。大量的视频数据是此任务提出的最大挑战,因为大多数聚类技术在准确性和效率方面都遭受高维数据的困扰。除此之外,大多数视频应用程序都需要在线处理。因此,也应在线完成此类任务的群集。本文提出了一种基于增量非负矩阵分解(INMF)的在线视频场景聚类/分段方法,该方法已被证明是一种强大的高维数据内容表示工具。所提出的算法(Comp-INMF)通过将竞争性学习方案集成到INMF中,可以在线表示视频内容并显着提高效率。它为非负矩阵分解中的秩选择问题带来了系统的解决方案,它等效于指定聚类数。通过在TRECVID视频序列上进行测试来评估聚类性能,并与包括自适应共振理论(ART)的基线方法进行性能比较,以证明所提出的视频聚类方案的效率和功效。从召回率,精度和F1度量方面报告的聚类性能表明,该算法的标记准确性非常显着,尤其是在构成视频分析挑战点的编辑效果区域。

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