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用于跨模态哈希的离散潜在因子模型

Discrete Latent Factor Model for Cross-Modal Hashing.

作者信息

Jiang Qing-Yuan, Li Wu-Jun

出版信息

IEEE Trans Image Process. 2019 Jul;28(7):3490-3501. doi: 10.1109/TIP.2019.2897944. Epub 2019 Feb 6.

Abstract

Due to its storage and retrieval efficiency, cross-modal hashing (CMH) has been widely used for cross-modal similarity search in many multimedia applications. According to the training strategy, existing CMH methods can be mainly divided into two categories: relaxation-based continuous methods and discrete methods. In general, the training of relaxation-based continuous methods is faster than that of discrete methods, but the accuracy of relaxation-based continuous methods is not satisfactory. On the contrary, the accuracy of discrete methods is typically better than that of the relaxation-based continuous methods, but the training of discrete methods is very time-consuming. In this paper, we propose a novel CMH method, called Discrete Latent Factor model-based cross-modal Hashing (DLFH), for cross modal similarity search. DLFH is a discrete method which can directly learn the binary hash codes for CMH. At the same time, the training of DLFH is efficient. Experiments show that the DLFH can achieve significantly better accuracy than existing methods, and the training time of DLFH is comparable to that of the relaxation-based continuous methods which are much faster than the existing discrete methods.

摘要

由于其存储和检索效率,跨模态哈希(CMH)已在许多多媒体应用中广泛用于跨模态相似性搜索。根据训练策略,现有的CMH方法主要可分为两类:基于松弛的连续方法和离散方法。一般来说,基于松弛的连续方法的训练比离散方法更快,但基于松弛的连续方法的准确性并不令人满意。相反,离散方法的准确性通常优于基于松弛的连续方法,但离散方法的训练非常耗时。在本文中,我们提出了一种用于跨模态相似性搜索的新颖的CMH方法,称为基于离散潜在因子模型的跨模态哈希(DLFH)。DLFH是一种离散方法,它可以直接学习用于CMH的二进制哈希码。同时,DLFH的训练效率很高。实验表明,DLFH可以实现比现有方法明显更好的准确性,并且DLFH的训练时间与比现有离散方法快得多的基于松弛的连续方法的训练时间相当。

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