Enhanced Discrete Multi-modal Hashing: More Constraints yet Less Time to Learn (Extended Abstract)

Yong Chen, Hui Zhang, Zhibao Tian, Jun Wang, Dell Zhang, Xuelong Li
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Abstract

This paper proposes a novel method, Enhanced Discrete Multi-modal Hashing (EDMH), which learns binary codes and hash functions simultaneously from the pairwise similarity matrix of data for large-scale cross-view retrieval. EDMH distinguishes itself from existing methods by considering not just the binarization constraint but also the balance and decorrelation constraints. Although those additional discrete constraints make the optimization problem of EDMH look a lot more complicated, we are actually able to develop a fast iterative learning algorithm in the alternating optimization framework for it, as after introducing a couple of auxiliary variables each subproblem of optimization turns out to have closed-form solutions. It has been confirmed by extensive experiments that EDMH can consistently deliver better retrieval performances than state-of-the-art MH methods at lower computational costs.
增强离散多模态哈希:更多的约束,更少的学习时间(扩展摘要)
本文提出了一种新的方法——增强离散多模态哈希(Enhanced Discrete Multi-modal hash, EDMH),该方法从数据的两两相似矩阵中同时学习二进制码和哈希函数,用于大规模的交叉视图检索。EDMH与现有方法的不同之处在于,它不仅考虑了二值化约束,还考虑了平衡约束和去相关约束。尽管这些额外的离散约束使EDMH的优化问题看起来更加复杂,但我们实际上能够在交替优化框架中为它开发一种快速迭代学习算法,因为在引入几个辅助变量之后,优化的每个子问题都有封闭形式的解。大量的实验已经证实,EDMH可以在更低的计算成本下始终提供比最先进的MH方法更好的检索性能。
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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