2021
DOI: 10.48550/arxiv.2109.00693
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AnANet: Modeling Association and Alignment for Cross-modal Correlation Classification

Abstract: The explosive increase of multimodal data makes a great demand in many cross-modal applications that follow the strict prior related assumption. Thus researchers study the definition of cross-modal correlation category and construct various classification systems and predictive models. However, those systems pay more attention to the fine-grained relevant types of cross-modal correlation, ignoring lots of implicit relevant data which are often divided into irrelevant types. What's worse is that none of previou… Show more

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