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Unsupervised Cross-Modal Hashing with Soft Constraint

机译:具有软约束的无监督跨模态散列

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The booming demands for cross-modal retrieval tasks can often bring in its wake the development of retrieval technologies, as people turn to pursuing a more effective way to improve the performance of search results in both accuracy and efficiency, for example by unsupervised cross-modal hashing. It's worth noting that most of the cross-modal hashing methods focus on utilizing merely one approach to generate hash codes. However, each approach has its own intrinsic drawback, which would inevitably diminish the quality of hash codes. In this paper, we propose a state-of-the-art model named Soft Constraint Hashing (SCH), using a special soft constraint term defined as an "information tunnel" to achieve the goal that conveys information from one approach to another. In particular, this "tunnel' can eliminate potential data noises to some extent and bridge the gap between two unsupervised discrete hashing allocation approaches to simultaneously reinforce the quality of hash codes. The empirical results on publicly available datasets illustrate that our proposed model outperforms all the existing unsupervised cross-model hashing methods.
机译:跨模式检索任务的蓬勃发展的需求通常会阻碍检索技术的发展,因为人们开始寻求更有效的方式来提高准确性和效率方面的搜索结果的性能,例如通过无监督的跨模式散列。值得注意的是,大多数跨模式散列方法都集中于仅利用一种方法来生成散列码。但是,每种方法都有其自身的固有缺点,这不可避免地会降低哈希码的质量。在本文中,我们提出了一种称为“软约束散列”(SCH)的最新模型,该模型使用一种特殊的软约束术语定义为“信息隧道”,以实现将信息从一种方法传递到另一种方法的目标。特别是,此“隧道”可以在某种程度上消除潜在的数据噪声,并弥合两种无监督的离散哈希分配方法之间的差距,以同时增强哈希码的质量。公开数据集上的经验结果表明,我们提出的模型优于所有现有的无监督跨模型哈希方法。

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