不同视觉词包标引技术的图像检索性能研究

Jit Mukherjee, J. Mukhopadhyay, Pabitra Mitra
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引用次数: 24

摘要

本文对不同标引技术下视觉词袋法的图像检索性能进行了研究。视觉词袋方法是一种基于内容的图像检索技术,将图像表示为视觉词出现的稀疏向量。本文使用不同的索引技术来计算查询图像的近似视觉词向量。这里使用了位置敏感哈希、基于sr树的索引和朴素的基于L1和L2范数的距离度量计算。标准数据集,如UKBench[19],假日数据集[9]和来自SMARAK1的图像用于性能分析。
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A survey on image retrieval performance of different bag of visual words indexing techniques
In this paper a survey has been carried out over image retrieval performances of bag of visual words (BoVW) method using different indexing techniques. Bag of visual word method is a content based image retrieval technique, where images are represented as a sparse vector of occurrences of visual words. In this paper different indexing techniques are used to compute near similar visual word vectors of a query image. Locality sensitive hashing, SR-tree based indexing and naive L1 and L2 norm based distance metric calculation are used here. Standard datasets like, UKBench [19], holiday dataset [9] and images from SMARAK1 are used for performance analysis.
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