一种基于动态时间规整的多度量相似性视频搜索方法

Haomin Cui, Ming Zhu
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引用次数: 2

摘要

本文提出了一种基于多度量的视频检索方法。视频片段由全局帧特征的有序列表表示,并进行系统采样。相似度是通过特征向量的组合顺序来衡量的,动态时间规整方法可以很好地描述特征向量的组合顺序。然而,在大型数据库中进行两两比较仍然是计算上昂贵的。为了提高搜索效率,我们提出了类别率和分散率作为相似向量点的附加度量来描述原点序列的收敛性,并过滤掉不相关的候选向量。在KNN相似视频搜索过程中,还采用了一种计算成本较低的带有Jaccard距离的动态时间翘曲的下界估计来剔除不受欢迎的候选视频。在两个基准数据库上的实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel multi-metric scheme using dynamic time warping for similarity video clip search
In this paper, we describe an approach to video retrieval based on a multi-metric scheme. The video clip is represented by an ordered list of global frame features with systematic sampling. Similarity is measured by the combination order of feature vectors, which can be well described by the dynamic time warping method. However, it is still computationally expensive to make pairwise comparison in huge databases. To improve the search efficiency, we propose the category rate and dispersion rate as additional metrics of similar vector points to describe converge of origin series and filter out irrelevant candidates. A cheap-to-compute low bound estimate of dynamic time warping with Jaccard distance is also used to prune off unpromising candidates in KNN similar video search process. Experimental results on two benchmark databases show the efficiency of proposed approach.
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