Adaptive nearest neighbor search for relevance feedback in large image databases

Peng Wu, B. S. Manjunath
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引用次数: 56

Abstract

Relevance feedback is often used in refining similarity retrievals in image and video databases. Typically this involves modification to the similarity metrics based on the user feedback and recomputing a set of nearest neighbors using the modified similarity values. Such nearest neighbor computations are expensive given that typical image features, such as color and texture, are represented in high dimensional spaces. Search complexity is a ciritcal issue while dealing with large databases and this issue has not received much attention in relevance feedback research. Most of the current methods report results on very small data sets, of the order of few thousand items, where a sequential (and hence exhaustive search) is practical. The main contribution of this paper is a novel algorithm for adaptive nearest neigbor computations for high dimensional feature vectors and when the number of items in the databse is large. The proposed method exploits the correlations between two consecutive nearest neighbor searches when the underlying similarity metric is changing, and filters out a significant number of candidates ina two stage search and retrieval process, thus reducing the number of I/O accesses to the database. Detailed experimental results are provided using a set of about 700,000 images. Comparision to the existing method shows an order of magnitude overall imporovement.
大型图像数据库中相关性反馈的自适应最近邻搜索
在图像和视频数据库中,相关反馈常用于改进相似度检索。通常,这涉及到基于用户反馈修改相似性度量,并使用修改后的相似性值重新计算一组最近邻。考虑到典型的图像特征(如颜色和纹理)是在高维空间中表示的,这种最近邻计算是昂贵的。在处理大型数据库时,搜索复杂性是一个非常重要的问题,而这一问题在相关反馈研究中一直没有得到足够的重视。目前的大多数方法报告的结果都是非常小的数据集,大约几千个项目,其中顺序(因此是穷举搜索)是可行的。本文的主要贡献是提出了一种新的算法,用于高维特征向量和数据库中项目数量较大时的自适应最近邻计算。该方法利用两个连续的最近邻搜索之间的相关性,在两个阶段的搜索和检索过程中过滤掉大量的候选对象,从而减少对数据库的I/O访问次数。使用一组约70万幅图像提供了详细的实验结果。与现有方法相比,总体上有一个数量级的提高。
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