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Simultaneous Detection Of Abrupt Cuts And Dissolves In Videos Using Support Vector Machines

机译:使用支持向量机同时检测视频中的突然剪切和溶解

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摘要

Video shot detection is an important contemporary problem since it is the first step towards indexing and content based video retrieval. Traditionally, video shot segmentation approaches rely on thresholding methodologies which are sensitive to the content of the video being processed and do not generalize well the when there is little prior knowledge about the video content. To ameliorate this shortcoming we propose a learning based methodology using a set of features that are specifically designed to capture the differences among hard cuts, gradual transitions and normal sequences of frames at the same time. A support vector machine (SVM) classifier is trained both to locate shot boundaries and characterize transition types. Numerical experiments using a variety of videos demonstrate that our method is capable of accurately discriminating shot transitions in videos with different characteristics.
机译:视频镜头检测是一个重要的当代问题,因为它是索引和基于内容的视频检索的第一步。传统上,视频镜头分割方法依赖于阈值化方法,该方法对正在处理的视频的内容敏感,并且在关于视频内容的先验知识很少的情况下不能很好地概括。为了改善这一缺点,我们提出了一种基于学习的方法,该方法使用了一组专门设计用于同时捕获硬剪切,渐变和正常帧序列之间差异的功能。支持向量机(SVM)分类器经过训练,既可以定位镜头边界,又可以表征过渡类型。使用各种视频进行的数值实验表明,我们的方法能够准确地区分具有不同特征的视频中的镜头过渡。

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