Supervised Binary Hash Code Learning with Jensen Shannon Divergence

Lixin Fan
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引用次数: 13

Abstract

This paper proposes to learn binary hash codes within a statistical learning framework, in which an upper bound of the probability of Bayes decision errors is derived for different forms of hash functions and a rigorous proof of the convergence of the upper bound is presented. Consequently, minimizing such an upper bound leads to consistent performance improvements of existing hash code learning algorithms, regardless of whether original algorithms are unsupervised or supervised. This paper also illustrates a fast hash coding method that exploits simple binary tests to achieve orders of magnitude improvement in coding speed as compared to projection based methods.
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基于Jensen Shannon散度的监督二进制哈希码学习
本文提出了在统计学习框架内学习二进制哈希码的方法,推导了不同形式哈希函数的贝叶斯决策错误概率的上界,并给出了上界收敛性的严格证明。因此,无论原始算法是无监督的还是有监督的,最小化这样的上界都会导致现有哈希码学习算法的性能提高。本文还演示了一种快速哈希编码方法,该方法利用简单的二进制测试来实现与基于投影的方法相比编码速度的数量级改进。
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