Deep Adaptive Attention Triple Hashing

Yang Shi, Xiushan Nie, Quan Zhou, Li Zou, Yilong Yin
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引用次数: 1

Abstract

Recent studies have verified that learning compact hash codes can facilitate big data retrieval processing. In particular, learning the deep hash function can greatly improve the retrieval performance. However, the existing deep supervised hashing algorithm treats all the samples in the same way, which leads to insufficient learning of difficult samples. Therefore, we cannot obtain the accurate learning of the similarity relation, making it difficult to achieve satisfactory performance. In light of this, this work proposes a deep supervised hashing model, called deep adaptive attention triple hashing (DAATH), which weights the similarity prediction scores of positive and negative samples in the form of triples, thus giving different degrees of attention to different samples. Compared with the traditional triple loss, it places a greater emphasis on the difficult triple, dramatically reducing the redundant calculation. Extensive experiments have been conducted to show that DAAH consistently outperforms the state-of-the-arts, confirmed its the effectiveness.
深度自适应注意力三重哈希
最近的研究证实,学习紧凑哈希码可以促进大数据检索处理。特别是,学习深度哈希函数可以大大提高检索性能。然而,现有的深度监督哈希算法对所有样本的处理方式都是相同的,这导致了对困难样本的学习不足。因此,我们无法获得相似关系的准确学习,难以达到令人满意的性能。鉴于此,本工作提出了一种深度监督哈希模型,称为深度自适应注意三重哈希(DAATH),该模型以三元组的形式对正、负样本的相似性预测分数进行加权,从而对不同的样本给予不同的关注程度。与传统的三重损失相比,它更加重视困难的三重损失,大大减少了冗余计算。广泛的实验表明,DAAH始终优于最先进的技术,证实了其有效性。
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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