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Joint scene classification and segmentation based on hidden Markov model

机译:基于隐马尔可夫模型的联合场景分类与分割

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摘要

Scene classification and segmentation are fundamental steps for efficient accessing, retrieving and browsing large amount of video data. We have developed a scene classification scheme using a Hidden Markov Model (HMM)-based classifier. By utilizing the temporal behaviors of different scene classes, HMM classifier can effectively classify presegmented clips into one of the predefined scene classes. In this paper, we describe three approaches for joint classification and segmentation based on HMM, which search for the most likely class transition path by using the dynamic programming technique. All these approaches utilize audio and visual information simultaneously. The first two approaches search optimal scene class transition based on the likelihood values computed for short video segment belonging to a particular class but with different search constrains. The third approach searches the optimal path in a super HMM by concatenating HMM's for different scene classes.
机译:场景分类和分段是高效访问,检索和浏览大量视频数据的基本步骤。我们使用基于隐马尔可夫模型(HMM)的分类器开发了一种场景分类方案。通过利用不同场景类别的时间行为,HMM分类器可以将预分段的剪辑有效地分类为预定义场景类别之一。在本文中,我们描述了三种基于HMM的联合分类和分割方法,它们使用动态规划技术来搜索最可能的类转换路径。所有这些方法都同时利用音频和视频信息。前两种方法基于为属于特定类别但具有不同搜索约束的短视频片段计算的似然值来搜索最佳场景类别转换。第三种方法是通过将HMM连接到不同的场景类来搜索超级HMM中的最佳路径。

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