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Video Temporal Segmentation Using Support VectorMachine

机译:支持向量机的视频时间分割

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A first step required to allow video indexing and retrieval of visual data is to perform a temporal segmentation, that is, to find the location of camera-shot transitions, which can be either abrupt or gradual. We adopt SVM technique to decide whether a shot transition exists or not within a given video sequence. Active learning strategy is used to accelerate training of SVM-classifiers. We also introduce a new feature description of video frame based on Local Binary Pattern (LBP).Cosine Distance is used to qualify the difference between frames in our works. The proposed method is evaluated on the TRECVID-2005 benchmarking platform and the experimental results reveal the effectiveness of the method.
机译:允许视频索引和检索视觉数据所需的第一步是执行时间分段,即找到相机拍摄转换的位置,这可以是突然的或渐进的。我们采用SVM技术来决定是否存在拍摄转换或不在给定的视频序列中。主动学习策略用于加速SVM分类器的培训。我们还引入了基于本地二进制模式(LBP)的视频帧的新功能描述.COSINE距离用于资格符合我们作品中帧之间的差异。在Trecvid-2005基准测试平台上评估所提出的方法,实验结果揭示了该方法的有效性。

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