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ShuffleMixer: An Efficient ConvNet for Image Super-Resolution

Authors :
Sun, Long
Pan, Jinshan
Tang, Jinhui
Sun, Long
Pan, Jinshan
Tang, Jinhui
Publication Year :
2022

Abstract

Lightweight and efficiency are critical drivers for the practical application of image super-resolution (SR) algorithms. We propose a simple and effective approach, ShuffleMixer, for lightweight image super-resolution that explores large convolution and channel split-shuffle operation. In contrast to previous SR models that simply stack multiple small kernel convolutions or complex operators to learn representations, we explore a large kernel ConvNet for mobile-friendly SR design. Specifically, we develop a large depth-wise convolution and two projection layers based on channel splitting and shuffling as the basic component to mix features efficiently. Since the contexts of natural images are strongly locally correlated, using large depth-wise convolutions only is insufficient to reconstruct fine details. To overcome this problem while maintaining the efficiency of the proposed module, we introduce Fused-MBConvs into the proposed network to model the local connectivity of different features. Experimental results demonstrate that the proposed ShuffleMixer is about 6x smaller than the state-of-the-art methods in terms of model parameters and FLOPs while achieving competitive performance. In NTIRE 2022, our primary method won the model complexity track of the Efficient Super-Resolution Challenge [23]. The code is available at https://github.com/sunny2109/MobileSR-NTIRE2022.<br />Comment: Winner of the model complexity track in NTIRE2022 Efficient Super-Resolution Challenge, CVPR 2022. The code is available at https://github.com/sunny2109/MobileSR-NTIRE2022

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333774735
Document Type :
Electronic Resource