Real-Time Super-Resolution for Real-World Images on Mobile Devices
- URL: http://arxiv.org/abs/2206.01777v1
- Date: Fri, 3 Jun 2022 18:44:53 GMT
- Title: Real-Time Super-Resolution for Real-World Images on Mobile Devices
- Authors: Jie Cai, Zibo Meng, Jiaming Ding, and Chiu Man Ho
- Abstract summary: Image Super-Resolution (ISR) aims at recovering High-Resolution (HR) images from the corresponding Low-Resolution (LR) counterparts.
Recent progress in ISR has been remarkable, but they are way too computationally intensive to be deployed on edge devices.
In this work, an approach for real-time ISR on mobile devices is presented, which is able to deal with a wide range of degradations in real-world scenarios.
- Score: 11.632812550056173
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Image Super-Resolution (ISR), which aims at recovering High-Resolution (HR)
images from the corresponding Low-Resolution (LR) counterparts. Although recent
progress in ISR has been remarkable. However, they are way too computationally
intensive to be deployed on edge devices, since most of the recent approaches
are deep learning-based. Besides, these methods always fail in real-world
scenes, since most of them adopt a simple fixed "ideal" bicubic downsampling
kernel from high-quality images to construct LR/HR training pairs which may
lose track of frequency-related details. In this work, an approach for
real-time ISR on mobile devices is presented, which is able to deal with a wide
range of degradations in real-world scenarios. Extensive experiments on
traditional super-resolution datasets (Set5, Set14, BSD100, Urban100, Manga109,
DIV2K) and real-world images with a variety of degradations demonstrate that
our method outperforms the state-of-art methods, resulting in higher PSNR and
SSIM, lower noise and better visual quality. Most importantly, our method
achieves real-time performance on mobile or edge devices.
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