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Please use this identifier to cite or link to this item: http://hdl.handle.net/11375/26865
Title: A Discrete Wavelet Transform GAN for NonHomogeneous Dehazing
Authors: Fu, Minghan
Advisor: Chen, Jun
Department: Electrical and Computer Engineering
Keywords: NonHomogeneous Dehazing;Discrete Wavelet Transform;Generative Adversarial Network;Deep Learning
Publication Date: 2021
Abstract: Hazy images are often subject to color distortion, blurring and other visible quality degradation. Some existing CNN-based methods have shown great performance on removing the homogeneous haze, but they are not robust in the non-homogeneous case. The reason is twofold. Firstly, due to the complicated haze distribution, texture details are easy to get lost during the dehazing process. Secondly, since the training pairs are hard to be collected, training on limited data can easily lead to the over-fitting problem. To tackle these two issues, we introduce a novel dehazing network using the 2D discrete wavelet transform, namely DW-GAN. Specifically, we propose a two-branch network to deal with the aforementioned problems. By utilizing the wavelet transform in the DWT branch, our proposed method can retain more high-frequency information in feature maps. To prevent over-fitting, ImageNet pre-trained Res2Net is adopted in the knowledge adaptation branch. Owing to the robust feature representations of ImageNet pre-training, the generalization ability of our network is improved dramatically. Finally, a patch-based discriminator is used to reduce artifacts of the restored images. Extensive experimental results demonstrate that the proposed method outperforms the state-of-the-art quantitatively and qualitatively.
URI: http://hdl.handle.net/11375/26865
Appears in Collections:Open Access Dissertations and Theses

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