Lightweight Single Image Super-Resolution Convolution Neural Network in Portable Device

Super-resolution can improve the clarity of low-resolution (LR) images, which can increase the accuracy of high-level compute vision tasks. Portable devices have low computing power and storage performance. Large-scale neural network super-resolution methods are not suitable for portable devices. In...

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Veröffentlicht in:KSII transactions on Internet and information systems 2021, 15(11), , pp.4065-4083
Hauptverfasser: Wang, Jin, Wu, Yiming, He, Shiming, Sharma, Pradip Kumar, Yu, Xiaofeng, Alfarraj, Osama, Tolba, Amr
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Sprache:eng
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Zusammenfassung:Super-resolution can improve the clarity of low-resolution (LR) images, which can increase the accuracy of high-level compute vision tasks. Portable devices have low computing power and storage performance. Large-scale neural network super-resolution methods are not suitable for portable devices. In order to save the computational cost and the number of parameters, Lightweight image processing method can improve the processing speed of portable devices. Therefore, we propose the Enhanced Information Multiple Distillation Network (EIMDN) to adapt lower delay and cost. The EIMDN takes feedback mechanism as the framework and obtains low level features through high level features. Further, we replace the feature extraction convolution operation in Information Multiple Distillation Block (IMDB), with Ghost module, and propose the Enhanced Information Multiple Distillation Block (EIMDB) to reduce the amount of calculation and the number of parameters. Finally, coordinate attention (CA) is used at the end of IMDB and EIMDB to enhance the important information extraction from Spaces and channels. Experimental results show that our proposed can achieve convergence faster with fewer parameters and computation, compared with other lightweight super-resolution methods. Under the condition of higher peak signal-to-noise ratio (PSNR) and higher structural similarity (SSIM), the performance of network reconstruction image texture and target contour is significantly improved. Keywords: Deep learning; super-resolution; feedback mechanism; information distillation; coordinate attention.
ISSN:1976-7277
1976-7277
DOI:10.3837/tiis.2021.11.011