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ReLLIE: Deep Reinforcement Learning for Customized Low-Light Image Enhancement
58
Citations
21
References
2021
Year
Unknown Venue
EngineeringMachine LearningRellie Models LlieComputational IlluminationDeblurringImage AnalysisData ScienceComputational ImagingSynthetic Image GenerationMachine VisionComputer ScienceDeep LearningImage EnhancementMarkov Decision ProcessComputer VisionDeep Reinforcement LearningBiomedical ImagingLow-light Image EnhancementImage Restoration
Low-light image enhancement (LLIE) is a pervasive yet challenging problem, since: 1) low-light measurements may vary due to different imaging conditions in practice; 2) images can be enlightened subjectively according to diverse preference by each individual. To tackle these two challenges, this paper presents a novel deep reinforcement learning based method, dubbed ReLLIE, for customized low-light enhancement. ReLLIE models LLIE as a markov decision process, i.e., estimating the pixel-wise image-specific curves sequentially and recurrently. Given the reward computed from a set of carefully crafted non-reference loss functions, a lightweight network is proposed to estimate the curves for enlightening of a low-light image input. As ReLLIE learns a policy instead of one-one image translation, it can handle various low-light measurements and provide customized enhanced outputs by flexibly applying the policy different times. Furthermore, ReLLIE can enhance real-world images with hybrid corruptions, i.e., noise, by using a plug-and-play denoiser easily. Extensive experiments on various benchmarks demonstrate the advantages of ReLLIE, comparing to the state-of-the-art methods. (Code is available: https://github.com/GuoLanqing/ReLLIE.)
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