Multi-Modal Mutual Attention and Iterative Interaction for Referring Image Segmentation
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Date
2023Type
- Journal Article
ETH Bibliography
yes
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Abstract
We address the problem of referring image segmentation that aims to generate a mask for the object specified by a natural language expression. Many recent works utilize Transformer to extract features for the target object by aggregating the attended visual regions. However, the generic attention mechanism in Transformer only uses the language input for attention weight calculation, which does not explicitly fuse language features in its output. Thus, its output feature is dominated by vision information, which limits the model to comprehensively understand the multi-modal information, and brings uncertainty for the subsequent mask decoder to extract the output mask. To address this issue, we propose Multi-Modal Mutual Attention (M(3)Att) and Multi-Modal Mutual Decoder (M(3)Dec) that better fuse information from the two input modalities. Based on M(3)Dec, we further propose Iterative Multi-modal Interaction (IMI) to allow continuous and in-depth interactions between language and vision features. Furthermore, we introduce Language Feature Reconstruction (LFR) to prevent the language information from being lost or distorted in the extracted feature. Extensive experiments show that our proposed approach significantly improves the baseline and outperforms state-of-the-art referring image segmentation methods on RefCOCO series datasets consistently. Show more
Publication status
publishedExternal links
Journal / series
IEEE Transactions on Image ProcessingVolume
Pages / Article No.
Publisher
IEEESubject
Referring image segmentation; multi-modal mutual attention; iterative multi-modal interaction; language feature reconstructionMore
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ETH Bibliography
yes
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