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Cross-view hashing via supervised deep discrete matrix factorization

机译:通过监督深度离散矩阵分解的跨视线散列

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Matrix factorization has been utilized for the task of cross-view hashing, where basis functions are learned to map data from different views to the same hamming embedding. It is possible that the basis functions between the hamming embedding and the original data matrix contain rather complex hierarchical information, which existing work can not capture. In addition, previous work employs relaxation technique in the matrix factorization based hashing which may lead to large quantization error. To address these issues, this paper presents a novel Supervised Discrete Deep Matrix Factorization (SDDMF) for cross-view hashing. We introduce deep matrix factorization so that SDDMF is able to learn a set of hierarchical basis functions and unified binary codes from different views. In addition, a classification error term is incorporated into the objective to learn discriminative binary codes. We then employ a linearization technique to directly optimize the discrete constraints which can significantly reduce the quantization error. Experimental results on three standard datasets with image-text modalities verify that SDDMF significantly outperforms several state-of-the-art methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:已经利用矩阵分解用于跨视角的任务,其中学习基础函数以将数据从不同视图映射到相同的汉明嵌入。汉明嵌入和原始数据矩阵之间的基本功能可能包含相当复杂的分层信息,该信息无法捕获。此外,以前的工作采用了基于矩阵分解的散列中的放松技术,这可能导致量化误差大。为了解决这些问题,本文提出了一种用于跨视线散列的新型监督离散深矩阵分解(SDDMF)。我们引入了深度的矩阵分解,使得SDDMF能够从不同视图中学习一组分层基本函数和统一的二进制代码。另外,分类误差项被纳入目标以学习判别二进制代码。然后,我们采用线性化技术直接优化离散的约束,可以显着降低量化误差。在三个标准数据集中的实验结果与图像文本方式验证了SDDMF显着优于几种最先进的方法。 (c)2020 elestvier有限公司保留所有权利。

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