具有细粒度相似嵌入的高维稀疏跨模态哈希

Yongxin Wang, Zhen-Duo Chen, Xin Luo, Xin-Shun Xu
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引用次数: 10

摘要

近年来,随着神经生物学的新发现,高维稀疏散列越来越受到人们的关注。与生成低维哈希码的普通哈希相比,高维稀疏哈希将输入映射到高维空间并生成稀疏哈希码,从而获得更好的性能。然而,在散列文献中对稀疏散列的研究还不够充分。例如,如何在跨模态检索任务中充分挖掘稀疏编码的力量;如何离散地求解二值约束和稀疏约束以避免量化误差问题。基于这些问题,本文提出了一种高效的稀疏哈希方法,即高维稀疏交叉模态哈希,简称HSCH。它既考虑了数据的高层语义相似度,又适当地利用了低层特征相似度。具体来说,我们从理论上设计了一个具有两个关键融合规则的细粒度相似性。然后利用稀疏码将细粒度相似度嵌入到待学习的哈希码中。此外,提出了一种有效的离散优化算法来解决二值约束和稀疏约束,减小了量化误差。鉴于此,它变得更加可训练,并且学习到的哈希码更具辨别性。更重要的是,HSCH的检索复杂度与一般哈希方法一样高效。在三个广泛使用的数据集上进行的大量实验表明,与几种最先进的跨模态哈希方法相比,HSCH具有优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Dimensional Sparse Cross-Modal Hashing with Fine-Grained Similarity Embedding
Recently, with the discoveries in neurobiology, high-dimensional sparse hashing has attracted increasing attention. In contrast with general hashing that generates low-dimensional hash codes, the high-dimensional sparse hashing maps inputs into a higher dimensional space and generates sparse hash codes, achieving superior performance. However, the sparse hashing has not been fully studied in hashing literature yet. For example, how to fully explore the power of sparse coding in cross-modal retrieval tasks; how to discretely solve the binary and sparse constraints so as to avoid the quantization error problem. Motivated by these issues, in this paper, we present an efficient sparse hashing method, i.e., High-dimensional Sparse Cross-modal Hashing, HSCH for short. It not only takes the high-level semantic similarity of data into consideration, but also properly exploits the low-level feature similarity. In specific, we theoretically design a fine-grained similarity with two critical fusion rules. Then we take advantage of sparse codes to embed the fine-grained similarity into the to-be-learnt hash codes. Moreover, an efficient discrete optimization algorithm is proposed to solve the binary and sparse constraints, reducing the quantization error. In light of this, it becomes much more trainable, and the learnt hash codes are more discriminative. More importantly, the retrieval complexity of HSCH is as efficient as general hash methods. Extensive experiments on three widely-used datasets demonstrate the superior performance of HSCH compared with several state-of-the-art cross-modal hashing approaches.
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