Discrete Multi-view Hashing for Effective Image Retrieval

Rui Yang, Yuliang Shi, Xin-Shun Xu
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引用次数: 34

Abstract

Recently, hashing techniques have witnessed an increase in popularity due to their low storage cost and high query speed for large scale data retrieval task, e.g., image retrieval. Many methods have been proposed; however, most existing hashing techniques focus on single view data. In many scenarios, there are multiple views in data samples. Thus, those methods working on single view can not make full use of rich information contained in multi-view data. Although some methods have been proposed for multi-view data; they usually relax binary constraints or separate the process of learning hash functions and binary codes into two independent stages to bypass the obstacle of handling the discrete constraints on binary codes for optimization, which may generate large quantization error. To consider these problems, in this paper, we propose a novel hashing method, i.e., Discrete Multi-view Hashing (DMVH), which can work on multi-view data directly and make full use of rich information in multi-view data. Moreover, in DMVH, we optimize discrete codes directly instead of relaxing the binary constraints so that we could obtain high-quality hash codes. Simultaneously, we present a novel approach to construct similarity matrix, which can not only preserve local similarity structure, but also keep semantic similarity between data points. To solve the optimization problem in DMVH, we further propose an alternate algorithm. We test the proposed model on three large scale data sets. Experimental results show that it outperforms or is comparable to several state-of-the-arts.
用于有效图像检索的离散多视图哈希
最近,哈希技术由于其低存储成本和高查询速度而越来越受欢迎,适用于大规模的数据检索任务,例如图像检索。已经提出了许多方法;然而,大多数现有的散列技术都侧重于单视图数据。在许多场景中,数据样本中有多个视图。因此,那些工作在单视图上的方法不能充分利用多视图数据中包含的丰富信息。虽然已经提出了一些多视图数据的方法;它们通常放宽二进制约束或将学习哈希函数和二进制码的过程分离为两个独立的阶段,以绕过处理二进制码的离散约束进行优化的障碍,从而可能产生较大的量化误差。针对这些问题,本文提出了一种新的哈希方法,即离散多视图哈希(DMVH),它可以直接处理多视图数据,并充分利用多视图数据中的丰富信息。此外,在DMVH中,我们直接优化离散码,而不是放松二进制约束,从而可以获得高质量的哈希码。同时,我们提出了一种新的相似矩阵构造方法,既能保持数据点之间的局部相似结构,又能保持数据点之间的语义相似。为了解决DMVH中的优化问题,我们进一步提出了一种替代算法。我们在三个大型数据集上测试了所提出的模型。实验结果表明,它优于或可与几种最先进的技术相媲美。
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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