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Proceedings ArticleDOI

Non-local Image Dehazing

TLDR
This work proposes an algorithm, linear in the size of the image, deterministic and requires no training, that performs well on a wide variety of images and is competitive with other state-of-the-art methods on the single image dehazing problem.
Abstract
Haze limits visibility and reduces image contrast in outdoor images. The degradation is different for every pixel and depends on the distance of the scene point from the camera. This dependency is expressed in the transmission coefficients, that control the scene attenuation and amount of haze in every pixel. Previous methods solve the single image dehazing problem using various patch-based priors. We, on the other hand, propose an algorithm based on a new, non-local prior. The algorithm relies on the assumption that colors of a haze-free image are well approximated by a few hundred distinct colors, that form tight clusters in RGB space. Our key observation is that pixels in a given cluster are often non-local, i.e., they are spread over the entire image plane and are located at different distances from the camera. In the presence of haze these varying distances translate to different transmission coefficients. Therefore, each color cluster in the clear image becomes a line in RGB space, that we term a haze-line. Using these haze-lines, our algorithm recovers both the distance map and the haze-free image. The algorithm is linear in the size of the image, deterministic and requires no training. It performs well on a wide variety of images and is competitive with other stateof-the-art methods.

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Citations
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Journal ArticleDOI

IDE: Image Dehazing and Exposure Using an Enhanced Atmospheric Scattering Model

TL;DR: Zhang et al. as mentioned in this paper introduced a new parameter, i.e., light absorption coefficient, into the atmospheric scattering model (ASM) to address the dim effect and better model outdoor hazy scenes.
Proceedings ArticleDOI

Learning Deep Priors for Image Dehazing

TL;DR: This work proposes an effective iteration algorithm with deep CNNs to learn haze-relevant priors for image dehazing and shows that it is able to generate clear images as well as accurate atmospheric light and transmission maps.
Journal ArticleDOI

A Fast Image Dehazing Algorithm Using Morphological Reconstruction

TL;DR: A novel restoration algorithm is proposed using a single image to reduce the environmental pollution effects, and it is based on the dark channel prior and the use of morphological reconstruction for fast computing of transmission maps.
Journal ArticleDOI

Joint learning of image detail and transmission map for single image dehazing

TL;DR: A new deep learning-based method for removing haze from single input image is proposed via joint estimation of clear image detail and transmission map, which is different from traditional methods only estimating a transmission map for a hazy image.
Journal ArticleDOI

Joint Transmission Map Estimation and Dehazing Using Deep Networks

TL;DR: Zhang et al. as mentioned in this paper proposed a unified single image dehazing network that jointly estimates the transmission map and performs de-hazing by using an end-to-end learning framework, where the inherent transmission maps and dehazed result are learned jointly from the loss function.
References
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Proceedings ArticleDOI

Visibility in bad weather from a single image

TL;DR: A cost function in the framework of Markov random fields is developed, which can be efficiently optimized by various techniques, such as graph-cuts or belief propagation, and is applicable for both color and gray images.
Journal ArticleDOI

Single image dehazing

TL;DR: Results demonstrate the new method abilities to remove the haze layer as well as provide a reliable transmission estimate which can be used for additional applications such as image refocusing and novel view synthesis.
Proceedings ArticleDOI

Fast visibility restoration from a single color or gray level image

TL;DR: A novel algorithm and variants for visibility restoration from a single image which allows visibility restoration to be applied for the first time within real-time processing applications such as sign, lane-marking and obstacle detection from an in-vehicle camera.
Proceedings ArticleDOI

Single image haze removal using dark channel prior

TL;DR: A simple but effective image prior - dark channel prior to remove haze from a single input image is proposed, based on a key observation - most local patches in haze-free outdoor images contain some pixels which have very low intensities in at least one color channel.
Journal ArticleDOI

Dehazing Using Color-Lines

TL;DR: A new method for single-image dehazing that relies on a generic regularity in natural images where pixels of small image patches typically exhibit a 1D distribution in RGB color space, known as color-lines is described.
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