You Only Look Yourself: Unsupervised and Untrained Single Image Dehazing Neural Network

30 Jun 2020Boyun LiYuanbiao GouShuhang GuJerry Zitao LiuJoey Tianyi ZhouXi Peng

In this paper, we study two challenging and less-touched problems in single image dehazing, namely, how to make deep learning achieve image dehazing without training on the ground-truth clean image (unsupervised) and a image collection (untrained). An unsupervised neural network will avoid the intensive labor collection of hazy-clean image pairs, and an untrained model is a ``real'' single image dehazing approach which could remove haze based on only the observed hazy image itself and no extra images is used... (read more)

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