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Nighttime Dehazing with a Synthetic Benchmark

About

Increasing the visibility of nighttime hazy images is challenging because of uneven illumination from active artificial light sources and haze absorbing/scattering. The absence of large-scale benchmark datasets hampers progress in this area. To address this issue, we propose a novel synthetic method called 3R to simulate nighttime hazy images from daytime clear images, which first reconstructs the scene geometry, then simulates the light rays and object reflectance, and finally renders the haze effects. Based on it, we generate realistic nighttime hazy images by sampling real-world light colors from a prior empirical distribution. Experiments on the synthetic benchmark show that the degrading factors jointly reduce the image quality. To address this issue, we propose an optimal-scale maximum reflectance prior to disentangle the color correction from haze removal and address them sequentially. Besides, we also devise a simple but effective learning-based baseline which has an encoder-decoder structure based on the MobileNet-v2 backbone. Experiment results demonstrate their superiority over state-of-the-art methods in terms of both image quality and runtime. Both the dataset and source code will be available at https://github.com/chaimi2013/3R.

Jing Zhang, Yang Cao, Zheng-Jun Zha, Dacheng Tao• 2020

Related benchmarks

TaskDatasetResultRank
Nighttime DehazingNHR (test)
PSNR21.321
38
Nighttime Image DehazingUNREAL-NH
SSIM0.67
32
Nighttime Image DehazingNHM
SSIM0.764
32
Nighttime Image DehazingNHCL
SSIM78.6
32
Nighttime Image DehazingNHCM
SSIM73.9
32
Nighttime Image DehazingNHCD
SSIM0.672
32
Nighttime Haze RemovalNHRW 51
NIMA4.857
16
Nighttime Image DehazingRWNH
BRISQUE Score20.86
12
Nighttime Image DehazingGTA5
SSIM0.711
12
Nighttime Image DehazingNHR
SSIM80.8
12
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