Abstract

In water scenes, where hazy images are subject to multiple scattering and where ideal data sets are difficult to collect, many dehazing methods are not as effective as they could be. Therefore, an unsupervised water scene dehazing network using atmospheric multiple scattering model is proposed. Unlike previous image dehazing methods, our method uses the unsupervised neural network and the atmospheric multiple scattering model and solves the problem of difficult acquisition of ideal datasets and the effect of multiple scattering on the image. In our method, in order to embed the atmospheric multiple scattering model into the unsupervised dehazing network, the unsupervised dehazing network uses four branches to estimate the scene radiation layer, transmission map layer, blur kernel layer and atmospheric light layer, the hazy image is then synthesized from the four output layers, minimizing the input hazy image and the output hazy image, where the output scene radiation layer is the final dehazing image. In addition, we constructed unsupervised loss functions which applicable to image dehazing by prior knowledge, i.e., color attenuation energy loss and dark channel loss. The method has a wide range of applications, with haze being thick and variable in marine, river and lake scenes, the method can be used to assist ship vision for target detection or forward road recognition in hazy conditions. Through extensive experiments on synthetic and real-world images, the proposed method is able to recover the details, structure and texture of the water image better than five advanced dehazing methods.

Highlights

  • Haze is a common atmospheric phenomenon that in water conditions such as oceans, rivers, lakes, etc

  • We proposed a reconstructed atmospheric multiple scattering model and an unsupervised dehazing network for dehazing in water condition, which solved the problem of the effect of multiple scattering on images and the difficulty of collecting ideal data

  • Compared with previous dehazing methods, the proposed network has three advantages: 1) Atmospheric multiple scattering model is used to dehaze in water conditions, which can effectively avoid the influence of multiple scattering on the image

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Summary

Introduction

Haze is a common atmospheric phenomenon that in water conditions such as oceans, rivers, lakes, etc. The main contributions of our method of image dehazing in water conditions are as follows: the unsupervised network and atmospheric multiple scattering model are adopted in this method, which solves the problem of the difficulty of collecting ideal datasets and the influence of multiple scattering on the image. We proposed a reconstructed atmospheric multiple scattering model and an unsupervised dehazing network for dehazing in water condition, which solved the problem of the effect of multiple scattering on images and the difficulty of collecting ideal data. Unsupervised water scene dehazing network using multiple scattering model an overview of the relevant work, mainly including the atmospheric scattering physical model, prior-based method, learning-based method and unsupervised image enhancement method. We demonstrate the advantages of the proposed method through qualitative and quantitative experiments

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