Image enhancement algorithm for non-uniform illumination in underground mines

Due to the non-uniform distribution of lighting systems and the presence of a large amount of dust and mist in the environment during the underground video collection process, there are problems with local light overexposure, insufficient brightness, low contrast, and weak edge information in the mo...

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Main Authors: MIAO Zuohua, ZHAO Chengcheng, ZHU Liangjian, LIU Daiwen, CHEN Aoguang
Format: Article
Language:zho
Published: Editorial Department of Industry and Mine Automation 2023-11-01
Series:Gong-kuang zidonghua
Subjects:
Online Access:http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.2023060032
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author MIAO Zuohua
ZHAO Chengcheng
ZHU Liangjian
LIU Daiwen
CHEN Aoguang
author_facet MIAO Zuohua
ZHAO Chengcheng
ZHU Liangjian
LIU Daiwen
CHEN Aoguang
author_sort MIAO Zuohua
collection DOAJ
description Due to the non-uniform distribution of lighting systems and the presence of a large amount of dust and mist in the environment during the underground video collection process, there are problems with local light overexposure, insufficient brightness, low contrast, and weak edge information in the monitoring image. In order to solve the above problems, an image enhancement algorithm for non-uniform illumination in underground mines is proposed. This algorithm is based on the improvement of Retinex-Net network structure, which includes three parts: non-uniform illumination suppression module (NLSM), illumination decomposition module (LDM), and image enhancement module (IEM). Among them, NLSM suppresses local non-uniform illumination of artificial light sources in the image. LDM decomposes the image into light and reflection layers. IEM enhances the illumination layer of the image, undergoes gamma correction, and ultimately obtains the enhanced image. Resnet is adopted as the infrastructure of the network in both NLSM and LDM. The channel attention module and spatial attention module in the convolutional attention mechanism are sequentially introduced to enhance the attention to image lighting features and the efficiency of feature selection. The experimental results show the following points. ① MBLLEN, RUAS, zeroDCE, zeroDCE++, Retinex−Net, KinD++, and non-uniform illumination image enhancement algorithms are selected to enhance and qualitatively analyze images in various scenarios (underground transportation environment, single light source roadway, multi light source roadway, ore scenario). The analysis results indicate that non-uniform illumination image enhancement algorithms can avoid excessive enhancement of artificial light source areas. There is no halo or blurring phenomenon in the light source area, and colors are not prone to color deviation. The contrast is moderate, and the visual effect of the image is more realistic. ② The information entropy (IE), average gradient (AG), standard deviation (SD), naturalness image quality evaluator (NIQE), structural similarity (SSIM), and peak signal-to-noise ratio (PSNR) are selected as evaluation indicators to quantitatively compare the quality of image enhancement images. The non-uniform illumination image enhancement algorithm is also in a relatively leading position in various scenarios. ③ The ablation experimental results show the non-uniform illumination image enhancement algorithm achieves optimal results on three evaluation indicators: NIQE, SSIM, and PSNR.
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spelling doaj.art-1be36ac10eec4b74adf71bbcdb5167c82024-01-09T08:36:55ZzhoEditorial Department of Industry and Mine AutomationGong-kuang zidonghua1671-251X2023-11-014911929910.13272/j.issn.1671-251x.2023060032Image enhancement algorithm for non-uniform illumination in underground minesMIAO ZuohuaZHAO Chengcheng0ZHU Liangjian1LIU Daiwen2CHEN Aoguang3School of Resources and Environmental Engineering , Wuhan University of Science and Technology, Wuhan 430081, ChinaSchool of Resources and Environmental Engineering , Wuhan University of Science and Technology, Wuhan 430081, ChinaSchool of Resources and Environmental Engineering , Wuhan University of Science and Technology, Wuhan 430081, ChinaSchool of Resources and Environmental Engineering , Wuhan University of Science and Technology, Wuhan 430081, ChinaDue to the non-uniform distribution of lighting systems and the presence of a large amount of dust and mist in the environment during the underground video collection process, there are problems with local light overexposure, insufficient brightness, low contrast, and weak edge information in the monitoring image. In order to solve the above problems, an image enhancement algorithm for non-uniform illumination in underground mines is proposed. This algorithm is based on the improvement of Retinex-Net network structure, which includes three parts: non-uniform illumination suppression module (NLSM), illumination decomposition module (LDM), and image enhancement module (IEM). Among them, NLSM suppresses local non-uniform illumination of artificial light sources in the image. LDM decomposes the image into light and reflection layers. IEM enhances the illumination layer of the image, undergoes gamma correction, and ultimately obtains the enhanced image. Resnet is adopted as the infrastructure of the network in both NLSM and LDM. The channel attention module and spatial attention module in the convolutional attention mechanism are sequentially introduced to enhance the attention to image lighting features and the efficiency of feature selection. The experimental results show the following points. ① MBLLEN, RUAS, zeroDCE, zeroDCE++, Retinex−Net, KinD++, and non-uniform illumination image enhancement algorithms are selected to enhance and qualitatively analyze images in various scenarios (underground transportation environment, single light source roadway, multi light source roadway, ore scenario). The analysis results indicate that non-uniform illumination image enhancement algorithms can avoid excessive enhancement of artificial light source areas. There is no halo or blurring phenomenon in the light source area, and colors are not prone to color deviation. The contrast is moderate, and the visual effect of the image is more realistic. ② The information entropy (IE), average gradient (AG), standard deviation (SD), naturalness image quality evaluator (NIQE), structural similarity (SSIM), and peak signal-to-noise ratio (PSNR) are selected as evaluation indicators to quantitatively compare the quality of image enhancement images. The non-uniform illumination image enhancement algorithm is also in a relatively leading position in various scenarios. ③ The ablation experimental results show the non-uniform illumination image enhancement algorithm achieves optimal results on three evaluation indicators: NIQE, SSIM, and PSNR.http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.2023060032underground low light imagenon uniform illumination imagesimage enhancementretinex-netimage brightnessresidual networkattention mechanism
spellingShingle MIAO Zuohua
ZHAO Chengcheng
ZHU Liangjian
LIU Daiwen
CHEN Aoguang
Image enhancement algorithm for non-uniform illumination in underground mines
Gong-kuang zidonghua
underground low light image
non uniform illumination images
image enhancement
retinex-net
image brightness
residual network
attention mechanism
title Image enhancement algorithm for non-uniform illumination in underground mines
title_full Image enhancement algorithm for non-uniform illumination in underground mines
title_fullStr Image enhancement algorithm for non-uniform illumination in underground mines
title_full_unstemmed Image enhancement algorithm for non-uniform illumination in underground mines
title_short Image enhancement algorithm for non-uniform illumination in underground mines
title_sort image enhancement algorithm for non uniform illumination in underground mines
topic underground low light image
non uniform illumination images
image enhancement
retinex-net
image brightness
residual network
attention mechanism
url http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.2023060032
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AT zhaochengcheng imageenhancementalgorithmfornonuniformilluminationinundergroundmines
AT zhuliangjian imageenhancementalgorithmfornonuniformilluminationinundergroundmines
AT liudaiwen imageenhancementalgorithmfornonuniformilluminationinundergroundmines
AT chenaoguang imageenhancementalgorithmfornonuniformilluminationinundergroundmines