2022
DOI: 10.3389/fpls.2022.978761
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Deep semantic segmentation for the quantification of grape foliar diseases in the vineyard

Abstract: Plant disease evaluation is crucial to pathogen management and plant breeding. Human field scouting has been widely used to monitor disease progress and provide qualitative and quantitative evaluation, which is costly, laborious, subjective, and often imprecise. To improve disease evaluation accuracy, throughput, and objectiveness, an image-based approach with a deep learning-based analysis pipeline was developed to calculate infection severity of grape foliar diseases. The image-based approach used a ground i… Show more

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Cited by 5 publications
(1 citation statement)
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“…Leveraging proximal imaging spectrometers to complement multispectral satellite platforms could help relate fine-scale, disease-induced changes in canopy reflectance to the relatively coarser signal observed by satellites, as well as mitigate error due to human bias. To address this challenge, Liu et al built and validated a computer-vision based GDM detection pipeline that uses geo-referenced, side-canopy images acquired by an autonomous rover to quantify symptom severity (Liu et al 2022). By standardizing and automating severity estimation, such systems can reduce potential error caused by human rater bias.…”
Section: Like Our Disease Classifiers Kharel Et Al's Random Forest Mo...mentioning
confidence: 99%
“…Leveraging proximal imaging spectrometers to complement multispectral satellite platforms could help relate fine-scale, disease-induced changes in canopy reflectance to the relatively coarser signal observed by satellites, as well as mitigate error due to human bias. To address this challenge, Liu et al built and validated a computer-vision based GDM detection pipeline that uses geo-referenced, side-canopy images acquired by an autonomous rover to quantify symptom severity (Liu et al 2022). By standardizing and automating severity estimation, such systems can reduce potential error caused by human rater bias.…”
Section: Like Our Disease Classifiers Kharel Et Al's Random Forest Mo...mentioning
confidence: 99%