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Regular Article
Volume: 67 | Article ID: 060503
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Daytime and Nighttime Image Haze Removal based on Improved Dark Channel Prior, Multiple-Scale Retinex, and Sparrow Search Optimization
  DOI :  10.2352/J.ImagingSci.Technol.2023.67.6.060503  Published OnlineNovember 2023
Abstract
Abstract

Image haze removal is a very essential preprocessing step in machine vision systems. Due to different imaging mechanisms of daytime hazy images and nighttime hazy images (such as different light sources), it is difficult to have a common method to achieve the dehazing effect of daytime and nighttime hazy images at the same time. Therefore, we propose a daytime image dehazing method based on a physical model and image enhancement, and a nighttime hazy image dehazing method based on image enhancement. For daytime hazy images, we propose an image dehazing method with improved dark channel priors, and image enhancement through an improved sparrow search algorithm. For nighttime hazy images, we propose an image dehazing method based on the improved multiple-scale Retinex, and finally use the improved sparrow search algorithm for post-processing to improve the visual effect of dehazing and enhance the details. Quantitative and qualitative experimental results prove that our method can achieve excellent sharpening effects on daytime and nighttime hazy images.

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  Cite this article 

Chuan Li, Hao Zhou, Xin Xie, Yuanyuan Liu, Xiaoran Wang, Guangyu Lu, Hailing Xiong, "Daytime and Nighttime Image Haze Removal based on Improved Dark Channel Prior, Multiple-Scale Retinex, and Sparrow Search Optimizationin Journal of Imaging Science and Technology,  2023,  pp 1 - 14,  https://doi.org/10.2352/J.ImagingSci.Technol.2023.67.6.060503

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Copyright © Society for Imaging Science and Technology 2023
  Article timeline 
  • received September 2022
  • accepted April 2023
  • PublishedNovember 2023

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