Learning To Restore Low-Light Images Via Decomposition-And-Enhancement

2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2020)

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摘要
Low-light images typically suffer from two problems. First, they have low visibility (i.e., small pixel values). Second, noise becomes significant and disrupts the image content, due to low signal-to-noise ratio. Most existing low-light image enhancement methods, however, learn from noise-negligible datasets. They rely on users having good photographic skills in taking images with low noise. Unfortunately, this is not the case for majority of the low-light images. While concurrently enhancing a low-light image and removing its noise is ill-posed, we observe that noise exhibits different levels of contrast in different frequency layers, and it is much easier to detect noise in the low-frequency layer than in the high one. Inspired by this observation, we propose a frequency-based decompositionand-enhancement model for low-light image enhancement. Based on this model, we present a novel network that first learns to recover image objects in the low frequency layer and then enhances high-frequency details based on the recovered image objects. In addition, we have prepared a new low-light image dataset with real noise to facilitate learning. Finally, we have conducted extensive experiments to show that the proposed method outperforms state-of-the-art approaches in enhancing practical noisy low-light images.
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关键词
signal-to-noise ratio,low-frequency layer,low-light image enhancement,low-light image dataset,decomposition-and-enhancement,noise-negligible datasets,image objects
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