Deep Self-Adaptive Hashing for Image Retrieval
Qinghong Lin, Xiaojun Chen, Qin Zhang, Shangxuan Tian, Yudong Chen

TL;DR
This paper introduces a deep self-adaptive hashing model for image retrieval that dynamically captures semantic relationships and emphasizes informative data pairs, improving retrieval accuracy without relying on fixed similarity matrices.
Contribution
The proposed DSAH model innovatively combines adaptive neighbor discovery and pairwise information content to enhance unsupervised deep hashing.
Findings
Outperforms existing unsupervised hashing methods on multiple datasets.
Effectively captures semantic structures through adaptive similarity refinement.
Prioritizes informative data pairs to boost discriminative power.
Abstract
Hashing technology has been widely used in image retrieval due to its computational and storage efficiency. Recently, deep unsupervised hashing methods have attracted increasing attention due to the high cost of human annotations in the real world and the superiority of deep learning technology. However, most deep unsupervised hashing methods usually pre-compute a similarity matrix to model the pairwise relationship in the pre-trained feature space. Then this similarity matrix would be used to guide hash learning, in which most of the data pairs are treated equivalently. The above process is confronted with the following defects: 1) The pre-computed similarity matrix is inalterable and disconnected from the hash learning process, which cannot explore the underlying semantic information. 2) The informative data pairs may be buried by the large number of less-informative data pairs. To…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Video Surveillance and Tracking Methods · Image Retrieval and Classification Techniques
