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Fast progressive image retrieval schemes based on updating enhanced equal-average equal-variance K nearest neighbour search in vector quantised feature database

机译:快速渐进图像检索方案,基于更新增强的平均平均等方案k最近邻居矢量规定的特征数据库

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This paper concerns with the problem of how to retrieve the images similar to the query image as fast as possible. The feature space is vector quantized to obtain several clusters, each cluster being denoted by a codeword. The feature vectors in each cluster are sorted in the ascending order of their mean values. The online image retrieval for a given query image is then progressively performed from its nearest cluster to its farthest cluster to find the first K nearest neighbors of the query feature vector as soon as possible. Experimental results show that the proposed retrieval methods can largely speed up the retrieval process.
机译:本文涉及如何尽可能快地检索类似于查询图像的图像。要素空间是量化的,以获得多个群集,每个群集由码字表示。每个群集中的特征向量按照其平均值的升序排序。然后,从其最近的群集到其最远的集群逐步执行给定查询图像的在线图像检索,以尽快找到查询特征向量的第一K最近邻居。实验结果表明,建议的检索方法可以在很大程度上加快检索过程。

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