Multi-Modality Cross Attention Network for Image and Sentence Matching

Xiaoyan Wei, Tianzhu Zhang, Yan Li, Yongdong Zhang, Feng Wu
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引用次数: 173

Abstract

The key of image and sentence matching is to accurately measure the visual-semantic similarity between an image and a sentence. However, most existing methods make use of only the intra-modality relationship within each modality or the inter-modality relationship between image regions and sentence words for the cross-modal matching task. Different from them, in this work, we propose a novel MultiModality Cross Attention (MMCA) Network for image and sentence matching by jointly modeling the intra-modality and inter-modality relationships of image regions and sentence words in a unified deep model. In the proposed MMCA, we design a novel cross-attention mechanism, which is able to exploit not only the intra-modality relationship within each modality, but also the inter-modality relationship between image regions and sentence words to complement and enhance each other for image and sentence matching. Extensive experimental results on two standard benchmarks including Flickr30K and MS-COCO demonstrate that the proposed model performs favorably against state-of-the-art image and sentence matching methods.
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图像与句子匹配的多模态交叉注意网络
图像与句子匹配的关键是准确测量图像与句子之间的视觉语义相似度。然而,现有的大多数方法仅利用每个模态内的模态关系或图像区域与句子单词之间的模态间关系来完成跨模态匹配任务。与之不同的是,本文提出了一种新的多模态交叉注意(multimodal Cross Attention, MMCA)网络,通过在统一的深度模型中对图像区域和句子单词的模态内和模态间关系进行联合建模,实现图像和句子的匹配。在MMCA模型中,我们设计了一种新的交叉注意机制,该机制不仅能够利用每个情态内的情态关系,还能够利用图像区域和句子单词之间的情态间关系,相互补充和增强,实现图像和句子的匹配。在两个标准基准(包括Flickr30K和MS-COCO)上的大量实验结果表明,该模型比最先进的图像和句子匹配方法表现良好。
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