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Semantic-Guided Zero-Shot Learning for Low-Light Image/Video Enhancement

About

Low-light images challenge both human perceptions and computer vision algorithms. It is crucial to make algorithms robust to enlighten low-light images for computational photography and computer vision applications such as real-time detection and segmentation. This paper proposes a semantic-guided zero-shot low-light enhancement network (SGZ) which is trained in the absence of paired images, unpaired datasets, and segmentation annotation. Firstly, we design an enhancement factor extraction network using depthwise separable convolution for an efficient estimate of the pixel-wise light deficiency of an low-light image. Secondly, we propose a recurrent image enhancement network to progressively enhance the low-light image with affordable model size. Finally, we introduce an unsupervised semantic segmentation network for preserving the semantic information during intensive enhancement. Extensive experiments on benchmark datasets and a low-light video demonstrate that our model outperforms the previous state-of-the-art. We further discuss the benefits of the proposed method for low-light detection and segmentation. Code is available at https://github.com/ShenZheng2000/Semantic-Guided-Low-Light-Image-Enhancement

Shen Zheng, Gaurav Gupta• 2021

Related benchmarks

TaskDatasetResultRank
Low-light Video EnhancementBVI-RLV (test)
PSNR24.026
29
Low-Light Novel View SynthesisNeRF360
PSNR13.56
29
Low-Light Novel View SynthesisLOM full
PSNR14.41
29
Low-Light Novel View SynthesisLLD
PSNR11.5
29
Low-light Image EnhancementVE-LOL-L v1 (test)
FID100.9
28
Low-light enhancementBVI-RLV 40 dynamic scenes
PSNR24.03
26
Novel View SynthesisLOM low-light 1.0 (test)
BUU PSNR19.21
14
Novel View SynthesisLOM low-light
PSNR14.14
12
Low-light Image EnhancementLOL
PSNR15.238
11
Low-light Video EnhancementDID (test)
PSNR15.03
5
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