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GGADN: Guided Generative Adversarial Dehazing Network
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Abstract
Image dehazing has always been a challenging topic in image processing. The development of deep learning methods, especially the Generative Adversarial Networks(GAN), provides a new way for image dehazing. In recent years, many deep learning methods based on GAN have been applied to image dehazing. However, GAN has two problems in image dehazing.
Firstly, For haze image, haze not only reduces the quality of the image, but also blurs the details of the image. For Gan network, it is difficult for the generator to restore the details of the whole image while removing the haze. Secondly, GAN model is defined as a minimax problem, which weakens the loss function. It is difficult to distinguish whether GAN is making progress in the training process. Therefore, we propose a Guided Generative Adversarial Dehazing Network(GGADN). Different from other generation adversarial networks, GGADN adds a guided module on the generator. The guided module verifies the network of each layer of the generator. At the same time, the details of the map generated by each layer are strengthened. Network training is based on the pre-trained VGG feature model and L1-regularized gradient prior which is developed by new loss function parameters. From the dehazing results of synthetic images and real images, proposed method is better than the state-of-the-art dehazing methods.
Title: GGADN: Guided Generative Adversarial Dehazing Network
Description:
Abstract
Image dehazing has always been a challenging topic in image processing.
The development of deep learning methods, especially the Generative Adversarial Networks(GAN), provides a new way for image dehazing.
In recent years, many deep learning methods based on GAN have been applied to image dehazing.
However, GAN has two problems in image dehazing.
Firstly, For haze image, haze not only reduces the quality of the image, but also blurs the details of the image.
For Gan network, it is difficult for the generator to restore the details of the whole image while removing the haze.
Secondly, GAN model is defined as a minimax problem, which weakens the loss function.
It is difficult to distinguish whether GAN is making progress in the training process.
Therefore, we propose a Guided Generative Adversarial Dehazing Network(GGADN).
Different from other generation adversarial networks, GGADN adds a guided module on the generator.
The guided module verifies the network of each layer of the generator.
At the same time, the details of the map generated by each layer are strengthened.
Network training is based on the pre-trained VGG feature model and L1-regularized gradient prior which is developed by new loss function parameters.
From the dehazing results of synthetic images and real images, proposed method is better than the state-of-the-art dehazing methods.
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