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Statistical models of video structure for content analysis and characterization

机译:用于内容分析和表征的视频结构统计模型

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Content structure plays an important role in the understanding of video. In this paper, we argue that knowledge about structure can be used both as a means to improve the performance of content analysis and to extract features that convey semantic information about the content. We introduce statistical models for two important components of this structure, shot duration and activity, and demonstrate the usefulness of these models with two practical applications. First, we develop a Bayesian formulation for the shot segmentation problem that is shown to extend the standard thresholding model in an adaptive and intuitive way, leading to improved segmentation accuracy. Second, by applying the transformation into the shot duration/activity feature space to a database of movie clips, we also illustrate how the Bayesian model captures semantic properties of the content. We suggest ways in which these properties can be used as a basis for intuitive content-based access to movie libraries.
机译:内容结构在理解视频中起着重要作用。在本文中,我们认为关于结构的知识既可以用作提高内容分析性能的一种方法,也可以用作提取传达有关内容语义信息的特征的方法。我们介绍了此结构的两个重要组成部分的统计模型,即击球持续时间和活动,并通过两个实际应用展示了这些模型的有用性。首先,我们针对镜头分割问题开发了贝叶斯公式,该公式被证明以一种自适应且直观的方式扩展了标准阈值模型,从而提高了分割精度。其次,通过将对镜头持续时间/活动特征空间的转换应用于电影剪辑的数据库,我们还说明了贝叶斯模型如何捕获内容的语义属性。我们建议将这些属性用作基于内容的直观访问电影库的基础。

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