Supervised topology preserving hashing

Shu Zhang, Man Zhang, Qi Li, T. Tan, R. He
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引用次数: 0

Abstract

Learning based hashing is gaining traction in large-scale retrieval systems. It aims to learn compact binary codes that can preserve semantic similarity in the hamming space. This paper presents a supervised topology hashing (SPTH) algorithm to learn compact binary codes that can exploit both the supervisory information as well as the local topology structure of datasets. To build a connection between the original space and the resultant hamming space, we minimize the quantization errors together with a classification error term and a topology preserving term. A nonlinear kernel feature space is further used to improve the generalization power. An alternating iterative algorithm is developed to minimize the complex objective function that contains both continuous and discrete variables. Experimental results on three benchmark datasets demonstrate the effectiveness of the proposed method on image retrieval tasks.
监督拓扑保持哈希
基于学习的哈希在大规模检索系统中越来越受欢迎。它旨在学习能够在汉明空间中保持语义相似性的紧凑二进制码。本文提出了一种监督拓扑哈希(SPTH)算法来学习紧凑二进制码,该算法既能利用数据集的监督信息,又能利用数据集的局部拓扑结构。为了在原始空间和生成的汉明空间之间建立联系,我们将量化误差与分类误差项和拓扑保持项一起最小化。进一步利用非线性核特征空间提高泛化能力。提出了一种交替迭代算法,用于最小化包含连续变量和离散变量的复杂目标函数。在三个基准数据集上的实验结果证明了该方法在图像检索任务中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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