基于支持向量机的镜头边界检测

Kazunori Matsumoto, Masaki Naito, K. Hoashi, F. Sugaya
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引用次数: 43

摘要

本文介绍了一种新的镜头边界检测算法及其评价。我们采用两阶段的数据融合方法和支持向量机技术来判断给定视频序列中是否存在边界。这种方法有助于避免巨大的特征空间问题,即使我们从视频序列中提取了许多有前途的特征。我们还引入了一个新的特征来提高检测。该特征由从局部帧序列中提取的两种值组成。一是目标帧与从相邻帧合成的图像之间的差异。另一个是邻居之间的差异。使用最小二乘技术可以快速提取该特征。在TRECVID评估框架下对算法进行了评估。我们的系统在TRECVID2005的镜头边界检测任务中取得了良好的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM-Based Shot Boundary Detection with a Novel Feature
This paper describes our new algorithm for shot boundary detection and its evaluation. We adopt a 2-stage data fusion approach with SVM technique to decide whether a boundary exists or not within a given video sequence. This approach is useful to avoid huge feature space problems, even when we adopt many promising features extracted from a video sequence. We also introduce a novel feature to improve detection. The feature consists of two kinds of values extracted from a local frame sequence. One is the image difference between the target frame and that synthesized from the neighbors. The other is the difference between neighbors. This feature can be extracted quickly with a least-square technique. Evaluation of our algorithm is conducted with the TRECVID evaluation framework. Our system obtained a high performance at a shot boundary detection task in TRECVID2005
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