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Discrete-continuous Action Space Policy Gradient-based Attention for Image-Text Matching

2021-04-21 08:34:22
Shiyang Yan, Li Yu, Yuan Xie

Abstract

Image-text matching is an important multi-modal task with massive applications. It tries to match the image and the text with similar semantic information. Existing approaches do not explicitly transform the different modalities into a common space. Meanwhile, the attention mechanism which is widely used in image-text matching models does not have supervision. We propose a novel attention scheme which projects the image and text embedding into a common space and optimises the attention weights directly towards the evaluation metrics. The proposed attention scheme can be considered as a kind of supervised attention and requiring no additional annotations. It is trained via a novel Discrete-continuous action space policy gradient algorithm, which is more effective in modelling complex action space than previous continuous action space policy gradient. We evaluate the proposed methods on two widely-used benchmark datasets: Flickr30k and MS-COCO, outperforming the previous approaches by a large margin.

Abstract (translated)

URL

https://arxiv.org/abs/2104.10406

PDF

https://arxiv.org/pdf/2104.10406.pdf


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