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Semantic Structure Enhanced Contrastive Adversarial Hash Network for Cross-media Representation Learning

Meiyu Liang, Junping Du, Xiaowen Cao, Yang Yu, Kangkang Lu, Zhe Xue, Min Zhang

2022Proceedings of the 30th ACM International Conference on Multimedia15 citationsDOI

Abstract

Deep cross-media hashing technology provides an efficient cross-media representation learning solution for cross-media search. However, the existing methods do not consider both fine-grained semantic features and semantic structures to mine implicit cross-media semantic associations, which leads to weaker semantic discrimination and consistency for cross-media representation. To tackle this problem, we propose a novel semantic structure enhanced contrastive adversarial hash network for cross-media representation learning (SCAHN). Firstly, in order to capture more fine-grained cross-media semantic associations, a fine-grained cross-media attention feature learning network is constructed, thus the learned saliency features of different modalities are more conducive to cross-media semantic alignment and fusion. Secondly, for further improving learning ability of implicit cross-media semantic associations, a semantic label association graph is constructed, and the graph convolutional network is utilized to mine the implicit semantic structures, thus guiding learning of discriminative features of different modalities. Thirdly, a cross-media and intra-media contrastive adversarial representation learning mechanism is proposed to further enhance the semantic discriminativeness of different modal representations, and a dual-way adversarial learning strategy is developed to maximize cross-media semantic associations, so as to obtain cross-media unified representations with stronger discriminativeness and semantic consistency preserving power. Extensive experiments on several cross-media benchmark datasets demonstrate that the proposed SCAHN outperforms the state-of-the-art methods.

Topics & Concepts

Computer scienceFeature learningArtificial intelligenceNatural language processingDiscriminative modelConvolutional neural networkDeep learningSemantic similarityHash functionRepresentation (politics)Consistency (knowledge bases)Semantics (computer science)Information retrievalPolitical scienceLawProgramming languageComputer securityPoliticsAdvanced Image and Video Retrieval TechniquesMultimodal Machine Learning ApplicationsHuman Pose and Action Recognition
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