Transfer Adversarial Hashing for Hamming Space Retrieval

Author:

Cao Zhangjie,Long Mingsheng,Huang Chao,Wang Jianmin

Abstract

Hashing is widely applied to large-scale image retrieval due to the storage and retrieval efficiency. Existing work on deep hashing assumes that the database in the target domain is identically distributed with the training set in the source domain. This paper relaxes this assumption to a transfer retrieval setting, which allows the database and the training set to come from different but relevant domains. However, the transfer retrieval setting will introduce two technical difficulties: first, the hash model trained on the source domain cannot work well on the target domain due to the large distribution gap; second, the domain gap makes it difficult to concentrate the database points to be within a small Hamming ball. As a consequence, transfer retrieval performance within Hamming Radius 2 degrades significantly in existing hashing methods. This paper presents Transfer Adversarial Hashing (TAH), a new hybrid deep architecture that incorporates a pairwise t-distribution cross-entropy loss to learn concentrated hash codes and an adversarial network to align the data distributions between the source and target domains. TAH can generate compact transfer hash codes for efficient image retrieval on both source and target domains. Comprehensive experiments validate that TAH yields state of the art Hamming space retrieval performance on standard datasets.

Publisher

Association for the Advancement of Artificial Intelligence (AAAI)

Subject

General Medicine

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Anchor-based Domain Adaptive Hashing for unsupervised image retrieval;International Journal of Machine Learning and Cybernetics;2024-08-21

2. IoT-V2E: An Uncertainty-Aware Cross-Modal Hashing Retrieval Between Infrared-Videos and EEGs for Automated Sleep State Analysis;IEEE Internet of Things Journal;2024-02-01

3. Asymmetric Transfer Hashing With Adaptive Bipartite Graph Learning;IEEE Transactions on Cybernetics;2024-01

4. Mixture of Experts Residual Learning for Hamming Hashing;Neural Processing Letters;2023-03-30

5. Two-Step Strategy for Domain Adaptation Retrieval;IEEE Transactions on Knowledge and Data Engineering;2023

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