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IMAGE DEHAZING USING GUIDED IMAGE FILTER

open access: yesInternational Journal of Advance Engineering and Research Development, 2017
openaire   +1 more source

Semi-Supervised Image Dehazing

IEEE Transactions on Image Processing, 2020
We present an effective semi-supervised learning algorithm for single image dehazing. The proposed algorithm applies a deep Convolutional Neural Network (CNN) containing a supervised learning branch and an unsupervised learning branch. In the supervised branch, the deep neural network is constrained by the supervised loss functions, which are mean ...
Lerenhan Li   +6 more
openaire   +2 more sources

Zero-Shot Image Dehazing

IEEE Transactions on Image Processing, 2020
In this paper, we study two less-touched challenging problems in single image dehazing neural networks, namely, how to remove haze from a given image in an unsupervised and zeroshot manner. To the ends, we propose a novel method based on the idea of layer disentanglement by viewing a hazy image as the entanglement of several "simpler" layers, i.e., a ...
Boyun Li   +5 more
openaire   +2 more sources

Depth aware image dehazing

The Visual Computer, 2021
Image dehazing aims to remove the haze noise and restore the image content from hazy images. It is a challenging task because of the unbalanced distribution of the haze noise and the variety of the image contents. Most existing methods apply convolutional neural networks to learn the dehazing process by blind end-to-end training, which relies on the ...
Fei Yang, Qian Zhang
openaire   +1 more source

Visual-quality-driven unsupervised image dehazing

Neural Networks, 2023
Most of the existing learning-based dehazing methods require a diverse and large collection of paired hazy/clean images, which is intractable to obtain. Therefore, existing dehazing methods resort to training on synthetic images. This may result in a possible domain shift when treating real scenes.
Aiping Yang   +6 more
openaire   +2 more sources

Task-Oriented Network for Image Dehazing

IEEE Transactions on Image Processing, 2020
Haze interferes the transmission of scene radiation and significantly degrades color and details of outdoor images. Existing deep neural networks-based image dehazing algorithms usually use some common networks. The network design does not model the image formation of haze process well, which accordingly leads to dehazed images containing artifacts and
Runde Li   +4 more
openaire   +2 more sources

Single image dehazing

ACM SIGGRAPH 2008 papers, 2008
In this paper we present a new method for estimating the optical transmission in hazy scenes given a single input image. Based on this estimation, the scattered light is eliminated to increase scene visibility and recover haze-free scene contrasts. In this new approach we formulate a refined image formation model that accounts for surface shading in ...
openaire   +1 more source

Single Image Dehazing Using Haze-Lines

IEEE Transactions on Pattern Analysis and Machine Intelligence, 2020
Haze often limits visibility and reduces contrast in outdoor images. The degradation varies spatially since it depends on the objects' distances from the camera. This dependency is expressed in the transmission coefficients, which control the attenuation.
Dana Berman, Tali Treibitz, Shai Avidan
openaire   +2 more sources

Adaptive dehazing control factor based fast single image dehazing

Multimedia Tools and Applications, 2019
The single image dehazing is performed using atmospheric scattering model (ASM). The ASM is based on transmission and atmospheric light. Thus, accurate estimation of transmission is essential for quality single image dehazing. Single image dehazing is of prime focus in research nowadays.
Suresh Chandra Raikwar   +1 more
openaire   +1 more source

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