Light adaptive image enhancement for improving visual analysis in intercropping cultivation

Intercropping maize and soybean with distinct plant heights is a typical practice in diversified cropping systems, where shadows cast by taller maize plants onto soybean rows pose significant challenges for image based recognition. This study conducted experiments throughout the entire soybean–maize...

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Main Authors: Wei Zhong, Wanting Yang, Yunfei Wang, Xiang Dong, Xiaowen Wang, Weidong Jia, Mingxiong Ou, Mingde Yan
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-08-01
Series:Frontiers in Plant Science
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Online Access:https://www.frontiersin.org/articles/10.3389/fpls.2025.1639016/full
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author Wei Zhong
Wanting Yang
Yunfei Wang
Xiang Dong
Xiaowen Wang
Weidong Jia
Mingxiong Ou
Mingde Yan
author_facet Wei Zhong
Wanting Yang
Yunfei Wang
Xiang Dong
Xiaowen Wang
Weidong Jia
Mingxiong Ou
Mingde Yan
author_sort Wei Zhong
collection DOAJ
description Intercropping maize and soybean with distinct plant heights is a typical practice in diversified cropping systems, where shadows cast by taller maize plants onto soybean rows pose significant challenges for image based recognition. This study conducted experiments throughout the entire soybean–maize intercropping period to address illumination variation. Based on the height difference between crops, solar elevation angle, and light intensity at the top of the soybean canopy, an illumination compensation regression model was developed. The model was applied to correct soybean canopy images and compared against traditional enhancement methods, including histogram equalization, Multi-Scale Retinex (MSR), and gamma correction. Quantitative evaluation using peak signal-to-noise ratio (PSNR) showed the proposed method achieved 40.79 dB, indicating superior image quality. Furthermore, analysis of RGB and HLS channels revealed a consistent increase in brightness from left (darker) to right (brighter) across the images. Specifically, green channel values rose from 150-230 to 180-240, and overall RGB values exceeded 150, suggesting improved brightness and reduced local fluctuations. Brightness increased from 90-200 to 150-220, with the left region rising from 125 to 175. Finally, a comparison of channel-wise standard deviations among methods showed that the proposed algorithm exhibited lower variance in the green (G) and hue (H) channels, with favorable consistency across others. These results demonstrate the model’s effectiveness in achieving smoother brightness transitions, thereby enhancing image uniformity and mitigating the negative impact of uneven illumination on recognition tasks.
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spelling doaj-art-d7c5494772844b7f973d0ed0aaf73e1f2025-08-20T05:32:30ZengFrontiers Media S.A.Frontiers in Plant Science1664-462X2025-08-011610.3389/fpls.2025.16390161639016Light adaptive image enhancement for improving visual analysis in intercropping cultivationWei Zhong0Wanting Yang1Yunfei Wang2Xiang Dong3Xiaowen Wang4Weidong Jia5Mingxiong Ou6Mingde Yan7School of Agricultural Engineering, Jiangsu University, Zhenjiang, ChinaSchool of Mechatronic Engineering, Taizhou University, Taizhou, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, ChinaChinese Academy of Agriculture Mechanization Sciences Group Co., Ltd., Beijing, ChinaIntercropping maize and soybean with distinct plant heights is a typical practice in diversified cropping systems, where shadows cast by taller maize plants onto soybean rows pose significant challenges for image based recognition. This study conducted experiments throughout the entire soybean–maize intercropping period to address illumination variation. Based on the height difference between crops, solar elevation angle, and light intensity at the top of the soybean canopy, an illumination compensation regression model was developed. The model was applied to correct soybean canopy images and compared against traditional enhancement methods, including histogram equalization, Multi-Scale Retinex (MSR), and gamma correction. Quantitative evaluation using peak signal-to-noise ratio (PSNR) showed the proposed method achieved 40.79 dB, indicating superior image quality. Furthermore, analysis of RGB and HLS channels revealed a consistent increase in brightness from left (darker) to right (brighter) across the images. Specifically, green channel values rose from 150-230 to 180-240, and overall RGB values exceeded 150, suggesting improved brightness and reduced local fluctuations. Brightness increased from 90-200 to 150-220, with the left region rising from 125 to 175. Finally, a comparison of channel-wise standard deviations among methods showed that the proposed algorithm exhibited lower variance in the green (G) and hue (H) channels, with favorable consistency across others. These results demonstrate the model’s effectiveness in achieving smoother brightness transitions, thereby enhancing image uniformity and mitigating the negative impact of uneven illumination on recognition tasks.https://www.frontiersin.org/articles/10.3389/fpls.2025.1639016/fullillumination compensationintercroppingheight differencesolar elevation anglegrowth stage
spellingShingle Wei Zhong
Wanting Yang
Yunfei Wang
Xiang Dong
Xiaowen Wang
Weidong Jia
Mingxiong Ou
Mingde Yan
Light adaptive image enhancement for improving visual analysis in intercropping cultivation
Frontiers in Plant Science
illumination compensation
intercropping
height difference
solar elevation angle
growth stage
title Light adaptive image enhancement for improving visual analysis in intercropping cultivation
title_full Light adaptive image enhancement for improving visual analysis in intercropping cultivation
title_fullStr Light adaptive image enhancement for improving visual analysis in intercropping cultivation
title_full_unstemmed Light adaptive image enhancement for improving visual analysis in intercropping cultivation
title_short Light adaptive image enhancement for improving visual analysis in intercropping cultivation
title_sort light adaptive image enhancement for improving visual analysis in intercropping cultivation
topic illumination compensation
intercropping
height difference
solar elevation angle
growth stage
url https://www.frontiersin.org/articles/10.3389/fpls.2025.1639016/full
work_keys_str_mv AT weizhong lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation
AT wantingyang lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation
AT yunfeiwang lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation
AT xiangdong lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation
AT xiaowenwang lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation
AT weidongjia lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation
AT mingxiongou lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation
AT mingdeyan lightadaptiveimageenhancementforimprovingvisualanalysisinintercroppingcultivation