Asymmetric and Discrete Self-Representation Enhancement Hashing for Cross-Domain Retrieval

IF 13.7
Jiaxing Li;Lin Jiang;Xiaozhao Fang;Shengli Xie;Yong Xu
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Abstract

Due to the characteristics of low storage requirement and high retrieval efficiency, hashing-based retrieval has shown its great potential and has been widely applied for information retrieval. However, retrieval tasks in real-world applications are usually required to handle the data from various domains, leading to the unsatisfactory performances of existing hashing-based methods, as most of them assuming that the retrieval pool and the querying set are similar. Most of the existing works overlooked the self-representation that containing the modality-specific semantic information, in the cross-modal data. To cope with the challenges mentioned above, this paper proposes an asymmetric and discrete self-representation enhancement hashing (ADSEH) for cross-domain retrieval. Specifically, ADSEH aligns the mathematical distribution with domain adaptation for cross-domain data, by exploiting the correlation of minimizing the distribution mismatch to reduce the heterogeneous semantic gaps. Then, ADSEH learns the self-representation which is embedded into the generated hash codes, for enhancing the semantic relevance, improving the quality of hash codes, and boosting the generalization ability of ADSEH. Finally, the heterogeneous semantic gaps are further reduced by the log-likelihood similarity preserving for the cross-domain data. Experimental results demonstrate that ADSEH can outperform some SOTA baseline methods on four widely used datasets.
跨域检索的非对称和离散自表示增强哈希
基于哈希的检索由于其低存储要求和高检索效率的特点,显示出了巨大的潜力,在信息检索中得到了广泛的应用。然而,实际应用程序中的检索任务通常需要处理来自不同领域的数据,这导致现有基于散列的方法的性能不令人满意,因为大多数方法都假设检索池和查询集是相似的。现有的研究大多忽略了跨模态数据中包含模态特定语义信息的自我表征。为了应对上述挑战,本文提出了一种用于跨域检索的非对称离散自表示增强哈希(ADSEH)方法。具体而言,ADSEH将数学分布与跨域数据的域适应结合起来,利用最小化分布不匹配的相关性来减少异构语义差距。然后,ADSEH学习嵌入到生成的哈希码中的自表示,以增强语义相关性,提高哈希码的质量,增强ADSEH的泛化能力。最后,通过对跨域数据的对数似然相似度保持,进一步减少了异构语义缺口。实验结果表明,ADSEH在四种广泛使用的数据集上优于一些SOTA基线方法。
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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