Rank Preserving Hashing for Rapid Image Search

Dongjin Song, W. Liu, David A. Meyer, D. Tao, R. Ji
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引用次数: 20

Abstract

In recent years, hashing techniques are becoming overwhelmingly popular for their high efficiency in handling large-scale computer vision applications. It has been shown that hashing techniques which leverage supervised information can significantly enhance performance, and thus greatly benefit visual search tasks. Typically, a modern hashing method uses a set of hash functions to compress data samples into compact binary codes. However, few methods have developed hash functions to optimize the precision at the top of a ranking list based upon Hamming distances. In this paper, we propose a novel supervised hashing approach, namely Rank Preserving Hashing (RPH), to explicitly optimize the precision of Hamming distance ranking towards preserving the supervised rank information. The core idea is to train disciplined hash functions in which the mistakes at the top of a Hamming-distance ranking list are penalized more than those at the bottom. To find such hash functions, we relax the original discrete optimization objective to a continuous surrogate, and then design an online learning algorithm to efficiently optimize the surrogate objective. Empirical studies based upon two benchmark image datasets demonstrate that the proposed hashing approach achieves superior image search accuracy over the state-of-the-art approaches.
基于秩保持哈希的快速图像搜索
近年来,哈希技术因其在处理大规模计算机视觉应用中的高效率而变得非常流行。已有研究表明,利用监督信息的哈希技术可以显著提高性能,从而极大地有利于视觉搜索任务。通常,现代哈希方法使用一组哈希函数将数据样本压缩为紧凑的二进制代码。然而,很少有方法开发哈希函数来优化基于汉明距离的排名列表顶部的精度。在本文中,我们提出了一种新的监督哈希方法,即秩保持哈希(RPH),以显式优化汉明距离排序的精度,以保持监督秩信息。其核心思想是训练有纪律的哈希函数,在哈希函数中,位于哈明距离排名表顶部的错误比位于底部的错误受到更多的惩罚。为了找到这样的哈希函数,我们将原始的离散优化目标松弛为一个连续的代理,然后设计一个在线学习算法来有效地优化代理目标。基于两个基准图像数据集的实证研究表明,所提出的哈希方法比最先进的方法具有更高的图像搜索精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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