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首页> 外文期刊>IEEE transactions on multimedia >Content-Based Copy Retrieval Using Distortion-Based Probabilistic Similarity Search
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Content-Based Copy Retrieval Using Distortion-Based Probabilistic Similarity Search

机译:使用基于失真的概率相似性搜索进行基于内容的副本检索

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摘要

Content-based copy retrieval (CBCR) aims at retrieving in a database all the modified versions or the previous versions of a given candidate object. In this paper, we present a copy-retrieval scheme based on local features that can deal with very large databases both in terms of quality and speed. We first propose a new approximate similarity search technique in which the probabilistic selection of the feature space regions is not based on the distribution in the database but on the distribution of the features distortion. Since our CBCR framework is based on local features, the approximation can be strong and reduce drastically the amount of data to explore. Furthermore, we show how the discrimination of the global retrieval can be enhanced during its post-processing step, by considering only the geometrically consistent matches. This framework is applied to robust video copy retrieval and extensive experiments are presented to study the interactions between the approximate search and the retrieval efficiency. Largest used database contains more than 1 billion local features corresponding to 30000 h of video
机译:基于内容的副本检索(CBCR)旨在在数据库中检索给定候选对象的所有修改版本或先前版本。在本文中,我们提出了一种基于本地特征的副本检索方案,该方案可以在质量和速度方面处理非常大的数据库。我们首先提出一种新的近似相似度搜索技术,其中特征空间区域的概率选择不是基于数据库中的分布,而是基于特征失真的分布。由于我们的CBCR框架是基于局部特征的,因此近似性很强,可以大大减少要探索的数据量。此外,我们展示了如何通过仅考虑几何上一致的匹配来在全局检索的后处理步骤中增强对其的区分。该框架应用于鲁棒的视频副本检索,并进行了广泛的实验,以研究近似搜索与检索效率之间的相互作用。使用量最大的数据库包含10亿多个本地特征,对应30000小时的视频

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