Efficient video similarity measurement with video signature

S. Cheung, A. Zakhor
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引用次数: 233

Abstract

The video signature method has previously been proposed as a technique to summarize video efficiently for visual similarity measurements (see Cheung, S.-C. and Zakhor, A., Proc. SPIE, vol.3964, p.34-6, 2000; ICIP2000, vol.1, p.85-9, 2000; ICIP2001, vol.1, p.649-52, 2001). We now develop the necessary theoretical framework to analyze this method. We define our target video similarity measure based on the fraction of similar clusters shared between two video sequences. This measure is too computationally complex to be deployed in database applications. By considering this measure geometrically on the image feature space, we find that it can be approximated by the volume of the intersection between Voronoi cells of similar clusters. In the video signature method, sampling is used to estimate this volume. By choosing an appropriate distribution to generate samples, and ranking the samples based upon their distances to the boundary between Voronoi cells, we demonstrate that our target measure can be well approximated by the video signature method. Experimental results on a large dataset of Web video and a set of MPEG-7 test sequences with artificially generated similar versions are used to demonstrate the retrieval performance of our proposed techniques.
基于视频签名的高效视频相似度测量
视频签名方法以前被提出作为一种技术,以有效地总结视频的视觉相似性测量(见Cheung, s . c .)。和Zakhor, A., Proc. SPIE, vol.3964, p.34-6, 2000;ICIP2000, vol.1, p.85-9, 2000;ICIP2001, vol.1, p.649-52, 2001)。我们现在发展必要的理论框架来分析这种方法。我们基于两个视频序列之间共享的相似簇的分数来定义我们的目标视频相似性度量。这种度量在计算上过于复杂,不适合部署在数据库应用程序中。通过在图像特征空间上几何考虑这一度量,我们发现它可以由相似簇的Voronoi细胞之间相交的体积来近似。在视频签名方法中,使用采样来估计该体积。通过选择合适的分布来生成样本,并根据样本到Voronoi细胞之间边界的距离对样本进行排序,我们证明了视频签名方法可以很好地近似我们的目标度量。在大型网络视频数据集和一组人工生成相似版本的MPEG-7测试序列上的实验结果证明了我们提出的技术的检索性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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