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Hierarchical Modeling and Adaptive Clustering for Real-Time Summarization of Rush Videos

机译:紧急视频的实时汇总的分层建模和自适应聚类

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摘要

In this paper, we provide detailed descriptions of a proposed new algorithm for video summarization, which are also included in our submission to TRECVID'08 on BBC rush summarization. Firstly, rush videos are hierarchically modeled using the formal language technique. Secondly, shot detections are applied to introduce a new concept of V-unit for structuring videos in line with the hierarchical model, and thus junk frames within the model are effectively removed. Thirdly, adaptive clustering is employed to group shots into clusters to determine retakes for redundancy removal. Finally, each most representative shot selected from every cluster is ranked according to its length and sum of activity level for summarization. Competitive results have been achieved to prove the effectiveness and efficiency of our techniques, which are fully implemented in the compressed domain. Our work does not require high-level semantics such as object detection and speech/audio analysis which provides a more flexible and general solution for this topic.
机译:在本文中,我们提供了一种针对视频汇总的新算法的详细说明,该算法也包含在提交给TRECVID'08的BBC紧急汇总中。首先,使用正式语言技术对紧急视频进行分层建模。其次,镜头检测被应用来引入新的V单元概念,以根据分层模型构造视频,从而有效地消除了模型中的垃圾帧。第三,采用自适应聚类将镜头分组为聚类,以确定用于去除冗余的重拍。最后,从每个聚类中选择的每个最具代表性的镜头都将根据其长度和活动级别的总和进行排名。已经获得了竞争性结果,证明了我们的技术的有效性和效率,这些技术已在压缩领域得到了全面实施。我们的工作不需要诸如对象检测和语音/音频分析之类的高级语义,它可以为该主题提供更为灵活和通用的解决方案。

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