Classification of summarized videos using hidden markov models on compressed chromaticity signatures

Cheng Lu, M. S. Drew, J. Au
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引用次数: 44

Abstract

Tools for efficiently summarizing and classifying video sequences are indispensable to assist in the synthesis and analysis of digital video. In this paper, we present a method for effective classification of different types of videos that uses the output of a concise video summarization technique that forms a list of keyframes. The summarization is produced by a method recently presented, in which we generate a universal basis on which to project a video frame feature that effectively reduces any video to the same lighting conditions. Each frame is represented by a compressed chromaticity signature. A multi-stage hierarchical clustering method efficiently summarizes any video. Here, we classify TV programs using a trained hidden Markov model, using the keyframe plus temporal features generated in the summaries.
利用隐马尔可夫模型对压缩色度特征进行视频分类
有效地对视频序列进行总结和分类的工具对于数字视频的合成和分析是必不可少的。在本文中,我们提出了一种对不同类型的视频进行有效分类的方法,该方法使用简明的视频摘要技术的输出来形成关键帧列表。摘要是由最近提出的一种方法产生的,在这种方法中,我们生成了一个通用的基础,在这个基础上投影视频帧特征,有效地将任何视频减少到相同的照明条件。每一帧由压缩色度特征表示。一种多阶段分层聚类方法可以有效地总结任意视频。在这里,我们使用经过训练的隐马尔可夫模型,利用摘要中生成的关键帧和时间特征对电视节目进行分类。
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