Publication | Closed Access
GraDual: Graph-based Dual-modal Representation for Image-Text Matching
50
Citations
29
References
2022
Year
EngineeringImage RetrievalImage-text Retrieval TaskImage SearchGraph MatchingNatural Language ProcessingImage-text RetrievalMultimodal LlmImage AnalysisInformation RetrievalText-to-image RetrievalPattern RecognitionImage-text MatchingMachine VisionVision Language ModelComputer ScienceImage SimilarityDeep LearningSemantic Context InformationComputer VisionGraph Theory
Image-text retrieval task is a challenging task. It aims to measure the visual-semantic correspondence between an image and a text caption. This is tough mainly because the image lacks semantic context information as in its corresponding text caption, and the text representation is very limited to fully describe the details of an image. In this paper, we introduce Graph-based Dual-modal Representations (GraDual), including Vision-Integrated Text Embedding (VITE) and Context-Integrated Visual Embedding (CIVE), for image-text retrieval. The GraDual improves the coverage of each modality by exploiting textual context semantics for the image representation, and using visual features as a guidance for the text representation. To be specific, we design: 1) a dual-modal graph representation mechanism to solve the lack of coverage issue for each modality. 2) an intermediate graph embedding integration strategy to enhance the important pattern across other modality global features. 3) a dual-modal driven crossmodal matching network to generate a filtered representation of another modality. Extensive experiments on two benchmark datasets, MS-COCO and Flickr30K, demonstrates the superiority of the proposed GraDual in comparison to state-of-the-art methods.
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