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Papers/Curricular Contrastive Regularization for Physics-aware Si...

Curricular Contrastive Regularization for Physics-aware Single Image Dehazing

Yu Zheng, Jiahui Zhan, Shengfeng He, Junyu Dong, Yong Du

2023-03-24CVPR 2023 1Image DehazingSingle Image Dehazing
PaperPDFCode(official)

Abstract

Considering the ill-posed nature, contrastive regularization has been developed for single image dehazing, introducing the information from negative images as a lower bound. However, the contrastive samples are nonconsensual, as the negatives are usually represented distantly from the clear (i.e., positive) image, leaving the solution space still under-constricted. Moreover, the interpretability of deep dehazing models is underexplored towards the physics of the hazing process. In this paper, we propose a novel curricular contrastive regularization targeted at a consensual contrastive space as opposed to a non-consensual one. Our negatives, which provide better lower-bound constraints, can be assembled from 1) the hazy image, and 2) corresponding restorations by other existing methods. Further, due to the different similarities between the embeddings of the clear image and negatives, the learning difficulty of the multiple components is intrinsically imbalanced. To tackle this issue, we customize a curriculum learning strategy to reweight the importance of different negatives. In addition, to improve the interpretability in the feature space, we build a physics-aware dual-branch unit according to the atmospheric scattering model. With the unit, as well as curricular contrastive regularization, we establish our dehazing network, named C2PNet. Extensive experiments demonstrate that our C2PNet significantly outperforms state-of-the-art methods, with extreme PSNR boosts of 3.94dB and 1.50dB, respectively, on SOTS-indoor and SOTS-outdoor datasets.

Results

TaskDatasetMetricValueModel
DehazingSOTS IndoorPSNR42.56C2PNet
DehazingSOTS IndoorSSIM0.9954C2PNet
DehazingSOTS OutdoorPSNR36.68C2PNet
DehazingSOTS OutdoorSSIM0.99C2PNet
Image DehazingSOTS IndoorPSNR42.56C2PNet
Image DehazingSOTS IndoorSSIM0.9954C2PNet
Image DehazingSOTS OutdoorPSNR36.68C2PNet
Image DehazingSOTS OutdoorSSIM0.99C2PNet

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