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Robust Unsupervised Cross-modal Hashing for Multimedia Retrieval

机译:用于多媒体检索的强大无监督的跨模态散列

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摘要

With the quick development of social websites, there are more opportunities to have different media types (such as text, image, video, etc.) describing the same topic from large-scale heterogeneous data sources. To efficiently identify the inter-media correlations for multimedia retrieval, unsupervised cross-modal hashing (UCMH) has gained increased interest due to the significant reduction in computation and storage. However, most UCMH methods assume that the data from different modalities are well paired. As a result, existing UCMH methods may not achieve satisfactory performance when partially paired data are given only. In this article, we propose a new-type of UCMH method called robust unsupervised cross-modal hashing (RUCMH). The major contribution lies in jointly learning modal-specific hash function, exploring the correlations among modalities with partial or even without any pairwise correspondence, and preserving the information of original features as much as possible. The learning process can be modeled via a joint minimization problem, and the corresponding optimization algorithm is presented. A series of experiments is conducted on four real-world datasets (Wiki, MIRFlickr, NUS-WIDE, and MS-COCO). The results demonstrate that RUCMH can significantly outperform the state-of-the-art unsupervised cross-modal hashing methods, especially for the partially paired case, which validates the effectiveness of RUCMH.
机译:随着社交网站的快速发展,有更多机会拥有不同的媒体类型(例如文本,图像,视频等),描述了来自大规模异构数据源的相同主题。为了有效地识别多媒体检索的媒体间相关性,由于计算和存储的显着降低,未经监视的跨模态散列(UCMH)已经增加了兴趣。但是,大多数UCMH方法假设来自不同模式的数据是合成的。结果,当仅给出部分配对数据时,现有的UCMH方法可能无法实现令人满意的性能。在本文中,我们提出了一种新型的UCMH方法,称为强大的无监督跨模态散列(RUCMH)。主要贡献在于共同学习模态特定哈希函数,探讨了部分甚至没有任何成对对应的方式的模式之间的相关性,并尽可能保留原始特征的信息。可以通过联合最小化问题进行建模学习过程,并提出了相应的优化算法。在四个现实世界数据集(Wiki,Mirflickr,Nus-宽和MS-Coco)上进行了一系列实验。结果表明,RUCMH可以显着优于最先进的无监督的跨模态散列方法,特别是对于验证RUCMH的有效性的部分成对案例。

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