CVPR2023
Learning Semantic-Aware Knowledge Guidance for Low-Light Image Enhancement
Yuhui Wu, Chen Pan, Guoqing Wang, Yang Yang, Jiwei Wei, Chongyi Li, Heng Tao Shen
摘要
LLFlow-L-SKF(Ours) LLFlow-S-SKF(Ours) LLFlow-S(AAAI 22) DRBN-SKF(Ours) KinD++-SKF(Ours) DRBN(CVPR 20) HWMNet(ICIP 22) HWMNet-SKF(Ours) DRBN(CVPR 20) KinD++(IJCV 20) LLFlow-S(AAAI 22) LLFlow-L (AAAI 22) KinD++-SKF(Ours) DRBN-SKF(Ours) LLFlow-L-SKF(Ours) LLFlow-S-SKF(Ours) HWMNet(ICIP 22) HWMNet-SKF(Ours) LLFlow-L(AAAI 22) Low-light Normal-light w/o Semantic w/ Semantic (a) Visual comparison on various scenes including car, human and sky. (b) Performance comparison on LOL/LOL-v2 (left/right) datasets KinD++(IJCV 20) Low-light Normal-light Low-light Normal-light w/ Semantic w/o Semantic w/ Semantic w/o Semantic SNR-Net-SKF(Ours) SNR-Net(CVPR 22) SNR-Net-SKF(Ours) SNR-Net(CVPR 22) Figure 1. Motivation and superiority. (a) The enhancement results (bottom row) without semantic priors show color deviations (e.g., the black car turns gray). (b) Our SKF provides remarkable performance boost on LOL/LOL-v2 datasets in terms of PSNR/SSIM.