A Cross-modal Retrieval Method Based on Sentence Dependency Attention
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    Abstract:

    With the rapid development of Internet technology, multimedia data of different view have grown exponentially, and people have been unable to satisfy the original single-modal data retrieval methods such as image retrieval. Cross-modal retrieval has became more and more important in information retrieval field. Aiming at this task, a cross-modal retrieval method for double-branch network structure by increase the attention mechanism of sentence-dependent phrases is proposed. The paper appies the CNN model to extract image features, and obtains the dependency segments of text based on syntactic structure analysis, and designs the original double-branch network structure model which embeds the attention mechanism to learn the weight distribution of each dependent segment, so that the feature representation of the text can be more focused on key sentence segment features. The experimental results show that the proposed method has better performance in the retrieval accuracy evaluation than other methods, and verify the effectiveness of the algorithm.

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曾辉,胡蓉,淦修修,彭志颖,熊李艳.基于依存关系注意力增强的跨模态检索研究[J].华东交通大学学报英文版,2020,37(6):126-132.
Zeng Hui, Hu Rong, Gan Xiuxiu, Peng Zhiying, Xiong Liyan. A Cross-modal Retrieval Method Based on Sentence Dependency Attention[J]. JOURNAL OF EAST CHINA JIAOTONG UNIVERSTTY,2020,37(6):126-132

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  • Received:
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  • Online: May 11,2021
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