CVJul 8, 2018

Image Super-Resolution Using Very Deep Residual Channel Attention Networks

arXiv:1807.02758v25270 citations
Originality Incremental advance
AI Analysis

This work addresses image super-resolution for applications like photography and medical imaging, presenting an incremental improvement over existing deep learning methods.

The paper tackles the difficulty of training very deep convolutional neural networks for image super-resolution by proposing a residual in residual structure and channel attention mechanism, achieving better accuracy and visual improvements over state-of-the-art methods.

Convolutional neural network (CNN) depth is of crucial importance for image super-resolution (SR). However, we observe that deeper networks for image SR are more difficult to train. The low-resolution inputs and features contain abundant low-frequency information, which is treated equally across channels, hence hindering the representational ability of CNNs. To solve these problems, we propose the very deep residual channel attention networks (RCAN). Specifically, we propose a residual in residual (RIR) structure to form very deep network, which consists of several residual groups with long skip connections. Each residual group contains some residual blocks with short skip connections. Meanwhile, RIR allows abundant low-frequency information to be bypassed through multiple skip connections, making the main network focus on learning high-frequency information. Furthermore, we propose a channel attention mechanism to adaptively rescale channel-wise features by considering interdependencies among channels. Extensive experiments show that our RCAN achieves better accuracy and visual improvements against state-of-the-art methods.

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