Abstract

In this paper, we propose a new unsupervised attention-based cycle generative adversarial network to solve the problem of single-image dehazing. The proposed method adds an attention mechanism that can dehaze different areas on the basis of the previous generative adversarial network (GAN) dehazing method. This mechanism not only avoids the need to change the haze-free area due to the overall style migration of traditional GANs, but also pays attention to the different degrees of haze concentrations that need to be changed, while retaining the details of the original image. To more accurately and quickly label the concentrations and areas of haze, we innovatively use training-enhanced dark channels as attention maps, combining the advantages of prior algorithms and deep learning. The proposed method does not require paired datasets, and it can adequately generate high-resolution images. Experiments demonstrate that our algorithm is superior to previous algorithms in various scenarios. The proposed algorithm can effectively process very hazy images, misty images, and haze-free images, which is of great significance for dehazing in complex scenes.

Highlights

  • In hazy weather, there are usually a large number of impurities in outdoor scenes

  • The results of the experiment were compared with six other methods using the O-HAZE dataset changes, the author showed that the network can pay attention to the entire image and perform

  • In addition to the network structure, a further the author showed that the network can pay attention to the entire image and perform holistic difference towhen that trained of the proposed is addition that Mejjati al. [26]structure, used a trained changes for enough method epochs

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Summary

Introduction

There are usually a large number of impurities (such as particulates and water droplets) in outdoor scenes. Due to the absorption and scattering of the atmosphere, haze, fog, and smoke are generated The influence of these factors causes a certain degree of degradation in the image quality acquired by a camera, reducing the sharpness and contrast of the captured image. With the popularization of computer vision systems and their application in various industries, these systems have played an important role in roads, aviation, and other fields. To enable these systems to function normally in various severe weather conditions, image clarity processing is essential

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