Litcius/Paper detail

Dual-GAN Complementary Learning for Real-World Image Denoising

Shaobo Zhao, Sheng Lin, Xi Cheng, Kexue Zhou, Min Zhang, Hai Wang

2023IEEE Sensors Journal23 citationsDOI

Abstract

The imaging process of real-world images is inevitably polluted by noise, which affects the visual quality and subsequent processing of images. How to restore image details while removing noise has always been a challenging problem. The existing complementary learning strategies combine the advantages of both denoised image learning and noise learning and have good denoised effects. However, these methods that are based on a single generative adversarial network (GAN) suffer from complex network structure, difficulty in training, and further improvement. Therefore, we propose the dual-GAN complementary learning (DGCL) strategy based on modular complementary learning strategy. The method based on this strategy has been verified on the real-world image denoising datasets [PolyU and smartphone image denoising dataset (SIDD)]. The results show that this strategy has a better performance compared with similar denoising algorithm in terms of visual quality and quantitative measurement, and this strategy shows the potential to further improve the performance by improving a module in the strategy.

Topics & Concepts

Artificial intelligenceComputer scienceNoise reductionNoise (video)Modular designDual (grammatical number)Process (computing)Image (mathematics)Machine learningPattern recognition (psychology)Image qualityQuality (philosophy)Computer visionOperating systemLiteratureEpistemologyArtPhilosophyImage and Signal Denoising MethodsImage Processing Techniques and ApplicationsAdvanced Image Fusion Techniques