Dynamic Association Learning of Self-Attention and Convolution in Image Restoration
Kui Jiang, Xuemei Jia, Wenxin Huang, Wenbin Wang, Zheng Wang, Junjun, Jiang

TL;DR
This paper introduces a novel association learning framework combining self-attention and convolution for improved image restoration, specifically in image deraining, by leveraging their complementary strengths.
Contribution
It proposes a multi-input attention module and a hybrid fusion network that integrate self-attention and convolution to enhance image deraining and background recovery.
Findings
Effective rain streak removal and background restoration achieved
Improved global and local feature extraction demonstrated
Enhanced image quality in restoration tasks
Abstract
CNNs and Self attention have achieved great success in multimedia applications for dynamic association learning of self-attention and convolution in image restoration. However, CNNs have at least two shortcomings: 1) limited receptive field; 2) static weight of sliding window at inference, unable to cope with the content diversity.In view of the advantages and disadvantages of CNNs and Self attention, this paper proposes an association learning method to utilize the advantages and suppress their shortcomings, so as to achieve high-quality and efficient inpainting. We regard rain distribution reflects the degradation location and degree, in addition to the rain distribution prediction. Thus, we propose to refine background textures with the predicted degradation prior in an association learning manner. As a result, we accomplish image deraining by associating rain streak removal and…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Fusion Techniques · Advanced Image Processing Techniques
MethodsAttention Is All You Need · Residual Connection · Byte Pair Encoding · Dropout · Label Smoothing · Absolute Position Encodings · Dense Connections · Adam · Layer Normalization · Position-Wise Feed-Forward Layer
