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Double-bit quantization and weighting for nearest neighbor search

机译:最近邻居搜索的双位量化和加权

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Binary embedding is an effective way for nearest neighbor (NN) search as binary code is storage efficient and fast to compute. It tries to convert real-value signatures into binary codes while preserving similarity of the original data. However, it greatly decreases the discriminability of original signatures due to the huge loss of information. In this paper, we propose a novel method double-bit quantization and weighting (DBQW) to solve the problem by mapping each dimension to double-bit binary code and assigning different weights according to their spatial relationship. The proposed method is applicable to a wide variety of embedding techniques, such as SH, PCA-ITQ and PCA-RR. Experimental comparisons on two datasets show that DBQW for NN search can achieve remarkable improvements in query accuracy compared to original binary embedding methods.
机译:二进制嵌入是最近邻(NN)搜索的有效方法,因为二进制代码存储效率高且计算速度快。它尝试将实值签名转换为二进制代码,同时保留原始数据的相似性。但是,由于信息的大量丢失,它大大降低了原始签名的可分辨性。在本文中,我们提出了一种新的方法双比特量化和加权(DBQW),通过将每个维映射到双比特二进制代码并根据它们的空间关系分配不同的权重来解决该问题。所提出的方法适用于多种嵌入技术,例如SH,PCA-ITQ和PCA-RR。在两个数据集上进行的实验比较表明,与原始二进制嵌入方法相比,用于NN搜索的DBQW可以显着提高查询准确性。

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