互补投影哈希

Zhongming Jin, Yao Hu, Yuetan Lin, Debing Zhang, Shiding Lin, Deng Cai, Xuelong Li
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引用次数: 58

摘要

近年来,哈希技术在许多视觉应用中被广泛应用于解决近似近邻搜索问题。通常,这些哈希方法生成2^c个桶,其中c是哈希码的长度。一个好的哈希方法应该满足以下两个要求:1)将附近的数据点映射到相同的桶或附近的桶(通过汉明距离测量)。2)所有数据点均匀分布在所有桶中。在本文中,我们提出了一种新的算法,称为互补投影哈希(CPH),以寻找明确考虑上述两个要求的最优哈希函数。具体来说,CPH的目标是依次找到一系列跨越数据稀疏区域的超平面(哈希函数)。同时,数据点均匀分布在这些超平面生成的超立方体中。通过与现有哈希算法的对比实验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complementary Projection Hashing
Recently, hashing techniques have been widely applied to solve the approximate nearest neighbors search problem in many vision applications. Generally, these hashing approaches generate 2^c buckets, where c is the length of the hash code. A good hashing method should satisfy the following two requirements: 1) mapping the nearby data points into the same bucket or nearby (measured by the Hamming distance) buckets. 2) all the data points are evenly distributed among all the buckets. In this paper, we propose a novel algorithm named Complementary Projection Hashing (CPH) to find the optimal hashing functions which explicitly considers the above two requirements. Specifically, CPH aims at sequentially finding a series of hyper planes (hashing functions) which cross the sparse region of the data. At the same time, the data points are evenly distributed in the hyper cubes generated by these hyper planes. The experiments comparing with the state-of-the-art hashing methods demonstrate the effectiveness of the proposed method.
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