Single image dehazing based on bright channel prior model and saliency analysis strategy

Abstract Haze is a common atmospheric phenomenon that causes poor visibility in outdoor images, which greatly limits image application in later stages. Therefore, haze removal has become the first and most indispensable step when dealing with degraded images. In this paper, we propose a novel bright...

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Main Authors: Libao Zhang, Shan Wang, Xiaohan Wang
Format: Article
Language:English
Published: Wiley 2021-04-01
Series:IET Image Processing
Online Access:https://doi.org/10.1049/ipr2.12082
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spelling doaj-19d47d98d3ce4a388a27e3b6c548dddf2021-07-14T13:20:46ZengWileyIET Image Processing1751-96591751-96672021-04-011551023103110.1049/ipr2.12082Single image dehazing based on bright channel prior model and saliency analysis strategyLibao Zhang0Shan Wang1Xiaohan Wang2School of Artificial Intelligence Beijing Normal University Beijing People's Republic of ChinaSchool of Artificial Intelligence Beijing Normal University Beijing People's Republic of ChinaSchool of Artificial Intelligence Beijing Normal University Beijing People's Republic of ChinaAbstract Haze is a common atmospheric phenomenon that causes poor visibility in outdoor images, which greatly limits image application in later stages. Therefore, haze removal has become the first and most indispensable step when dealing with degraded images. In this paper, we propose a novel bright channel prior (BCP) model and a saliency analysis strategy for haze removal. First, we obtain a more robust and accurate atmospheric light by a superpixel‐based dark channel method. Second, we utilize the dark channel prior (DCP) to handle dark regions in hazy images. However, the DCP often mistakes white regions for opaque haze and thus causes serious colour distortion and halo effects. To solve this problem, a new BCP is proposed to accurately estimate the transmission of bright regions in hazy images. Third, we fuse the DCP and BCP using a multiscale fusion strategy with Laplacian pyramid representation to gain the correct transmission information for both bright and dark regions. Finally, a novel saliency analysis strategy for transmission refinement is proposed, so that the texture details can remain present to the greatest extent in the restored images. The experimental results illustrate that our proposed method performs well in restoring images containing bright objects.https://doi.org/10.1049/ipr2.12082
collection DOAJ
language English
format Article
sources DOAJ
author Libao Zhang
Shan Wang
Xiaohan Wang
spellingShingle Libao Zhang
Shan Wang
Xiaohan Wang
Single image dehazing based on bright channel prior model and saliency analysis strategy
IET Image Processing
author_facet Libao Zhang
Shan Wang
Xiaohan Wang
author_sort Libao Zhang
title Single image dehazing based on bright channel prior model and saliency analysis strategy
title_short Single image dehazing based on bright channel prior model and saliency analysis strategy
title_full Single image dehazing based on bright channel prior model and saliency analysis strategy
title_fullStr Single image dehazing based on bright channel prior model and saliency analysis strategy
title_full_unstemmed Single image dehazing based on bright channel prior model and saliency analysis strategy
title_sort single image dehazing based on bright channel prior model and saliency analysis strategy
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-04-01
description Abstract Haze is a common atmospheric phenomenon that causes poor visibility in outdoor images, which greatly limits image application in later stages. Therefore, haze removal has become the first and most indispensable step when dealing with degraded images. In this paper, we propose a novel bright channel prior (BCP) model and a saliency analysis strategy for haze removal. First, we obtain a more robust and accurate atmospheric light by a superpixel‐based dark channel method. Second, we utilize the dark channel prior (DCP) to handle dark regions in hazy images. However, the DCP often mistakes white regions for opaque haze and thus causes serious colour distortion and halo effects. To solve this problem, a new BCP is proposed to accurately estimate the transmission of bright regions in hazy images. Third, we fuse the DCP and BCP using a multiscale fusion strategy with Laplacian pyramid representation to gain the correct transmission information for both bright and dark regions. Finally, a novel saliency analysis strategy for transmission refinement is proposed, so that the texture details can remain present to the greatest extent in the restored images. The experimental results illustrate that our proposed method performs well in restoring images containing bright objects.
url https://doi.org/10.1049/ipr2.12082
work_keys_str_mv AT libaozhang singleimagedehazingbasedonbrightchannelpriormodelandsaliencyanalysisstrategy
AT shanwang singleimagedehazingbasedonbrightchannelpriormodelandsaliencyanalysisstrategy
AT xiaohanwang singleimagedehazingbasedonbrightchannelpriormodelandsaliencyanalysisstrategy
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