Improving computer vision for plant pathology through advanced training techniques
Premise This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma cacao. Methods Despite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates...
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Published in | Applications in plant sciences Vol. 13; no. 3; pp. e70010 - n/a |
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Main Authors | , , |
Format | Journal Article |
Language | English |
Published |
United States
John Wiley & Sons, Inc
01.05.2025
John Wiley and Sons Inc Wiley |
Subjects | |
Online Access | Get full text |
ISSN | 2168-0450 2168-0450 |
DOI | 10.1002/aps3.70010 |
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Abstract | Premise
This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma cacao.
Methods
Despite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates significant advancements in performance through semi‐supervised learning, specialised loss functions, and the inclusion of a non‐cocoa class.
Results
Semi‐supervised learning reduced overfitting and enhanced generalisability, particularly for subtle symptoms. The non‐cocoa class exposed models to a broad range of relevant features, significantly improving model robustness and performance in difficult cases. Grad‐CAM for qualitative assessment provided valuable insights into model behaviour, highlighting cases of overfitting missed by summary statistics. We also describe dynamic focal loss, a novel loss function that uses an empirical measure of difficulty to weight each image. Our results suggest that while PhytNet shows promise in terms of computational efficiency and superior handling of difficult images, ResNet18 with semi‐supervised learning and dynamic focal loss emerged as the strongest contender for real‐world deployment.
Discussion
This research underscores the potential of semi‐supervised learning and advanced loss functions in enhancing the applicability of deep learning models in agricultural disease management. It also presents a new high‐quality benchmark dataset of 7220 images of diseased and healthy cocoa trees, offering a much greater and more realistic challenge than the Plan Village dataset. |
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AbstractList | Abstract Premise This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma cacao. Methods Despite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates significant advancements in performance through semi‐supervised learning, specialised loss functions, and the inclusion of a non‐cocoa class. Results Semi‐supervised learning reduced overfitting and enhanced generalisability, particularly for subtle symptoms. The non‐cocoa class exposed models to a broad range of relevant features, significantly improving model robustness and performance in difficult cases. Grad‐CAM for qualitative assessment provided valuable insights into model behaviour, highlighting cases of overfitting missed by summary statistics. We also describe dynamic focal loss, a novel loss function that uses an empirical measure of difficulty to weight each image. Our results suggest that while PhytNet shows promise in terms of computational efficiency and superior handling of difficult images, ResNet18 with semi‐supervised learning and dynamic focal loss emerged as the strongest contender for real‐world deployment. Discussion This research underscores the potential of semi‐supervised learning and advanced loss functions in enhancing the applicability of deep learning models in agricultural disease management. It also presents a new high‐quality benchmark dataset of 7220 images of diseased and healthy cocoa trees, offering a much greater and more realistic challenge than the Plan Village dataset. Premise This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma cacao. Methods Despite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates significant advancements in performance through semi‐supervised learning, specialised loss functions, and the inclusion of a non‐cocoa class. Results Semi‐supervised learning reduced overfitting and enhanced generalisability, particularly for subtle symptoms. The non‐cocoa class exposed models to a broad range of relevant features, significantly improving model robustness and performance in difficult cases. Grad‐CAM for qualitative assessment provided valuable insights into model behaviour, highlighting cases of overfitting missed by summary statistics. We also describe dynamic focal loss, a novel loss function that uses an empirical measure of difficulty to weight each image. Our results suggest that while PhytNet shows promise in terms of computational efficiency and superior handling of difficult images, ResNet18 with semi‐supervised learning and dynamic focal loss emerged as the strongest contender for real‐world deployment. Discussion This research underscores the potential of semi‐supervised learning and advanced loss functions in enhancing the applicability of deep learning models in agricultural disease management. It also presents a new high‐quality benchmark dataset of 7220 images of diseased and healthy cocoa trees, offering a much greater and more realistic challenge than the Plan Village dataset. This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma cacao.PremiseThis study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma cacao.Despite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates significant advancements in performance through semi-supervised learning, specialised loss functions, and the inclusion of a non-cocoa class.MethodsDespite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates significant advancements in performance through semi-supervised learning, specialised loss functions, and the inclusion of a non-cocoa class.Semi-supervised learning reduced overfitting and enhanced generalisability, particularly for subtle symptoms. The non-cocoa class exposed models to a broad range of relevant features, significantly improving model robustness and performance in difficult cases. Grad-CAM for qualitative assessment provided valuable insights into model behaviour, highlighting cases of overfitting missed by summary statistics. We also describe dynamic focal loss, a novel loss function that uses an empirical measure of difficulty to weight each image. Our results suggest that while PhytNet shows promise in terms of computational efficiency and superior handling of difficult images, ResNet18 with semi-supervised learning and dynamic focal loss emerged as the strongest contender for real-world deployment.ResultsSemi-supervised learning reduced overfitting and enhanced generalisability, particularly for subtle symptoms. The non-cocoa class exposed models to a broad range of relevant features, significantly improving model robustness and performance in difficult cases. Grad-CAM for qualitative assessment provided valuable insights into model behaviour, highlighting cases of overfitting missed by summary statistics. We also describe dynamic focal loss, a novel loss function that uses an empirical measure of difficulty to weight each image. Our results suggest that while PhytNet shows promise in terms of computational efficiency and superior handling of difficult images, ResNet18 with semi-supervised learning and dynamic focal loss emerged as the strongest contender for real-world deployment.This research underscores the potential of semi-supervised learning and advanced loss functions in enhancing the applicability of deep learning models in agricultural disease management. It also presents a new high-quality benchmark dataset of 7220 images of diseased and healthy cocoa trees, offering a much greater and more realistic challenge than the Plan Village dataset.DiscussionThis research underscores the potential of semi-supervised learning and advanced loss functions in enhancing the applicability of deep learning models in agricultural disease management. It also presents a new high-quality benchmark dataset of 7220 images of diseased and healthy cocoa trees, offering a much greater and more realistic challenge than the Plan Village dataset. This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, . Despite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates significant advancements in performance through semi-supervised learning, specialised loss functions, and the inclusion of a non-cocoa class. Semi-supervised learning reduced overfitting and enhanced generalisability, particularly for subtle symptoms. The non-cocoa class exposed models to a broad range of relevant features, significantly improving model robustness and performance in difficult cases. Grad-CAM for qualitative assessment provided valuable insights into model behaviour, highlighting cases of overfitting missed by summary statistics. We also describe dynamic focal loss, a novel loss function that uses an empirical measure of difficulty to weight each image. Our results suggest that while PhytNet shows promise in terms of computational efficiency and superior handling of difficult images, ResNet18 with semi-supervised learning and dynamic focal loss emerged as the strongest contender for real-world deployment. This research underscores the potential of semi-supervised learning and advanced loss functions in enhancing the applicability of deep learning models in agricultural disease management. It also presents a new high-quality benchmark dataset of 7220 images of diseased and healthy cocoa trees, offering a much greater and more realistic challenge than the Plan Village dataset. Premise This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma cacao. Methods Despite recent stagnation in accuracy improvements in computer vision for image classification, our research demonstrates significant advancements in performance through semi‐supervised learning, specialised loss functions, and the inclusion of a non‐cocoa class. Results Semi‐supervised learning reduced overfitting and enhanced generalisability, particularly for subtle symptoms. The non‐cocoa class exposed models to a broad range of relevant features, significantly improving model robustness and performance in difficult cases. Grad‐CAM for qualitative assessment provided valuable insights into model behaviour, highlighting cases of overfitting missed by summary statistics. We also describe dynamic focal loss, a novel loss function that uses an empirical measure of difficulty to weight each image. Our results suggest that while PhytNet shows promise in terms of computational efficiency and superior handling of difficult images, ResNet18 with semi‐supervised learning and dynamic focal loss emerged as the strongest contender for real‐world deployment. Discussion This research underscores the potential of semi‐supervised learning and advanced loss functions in enhancing the applicability of deep learning models in agricultural disease management. It also presents a new high‐quality benchmark dataset of 7220 images of diseased and healthy cocoa trees, offering a much greater and more realistic challenge than the Plan Village dataset. |
Author | Sykes, Jamie R. Denby, Katherine J. Franks, Daniel W. |
AuthorAffiliation | 1 Department of Computer Science University of York, Deramore Lane York YO10 5GH Yorkshire United Kingdom 2 Centre for Novel Agricultural Products, Department of Biology University of York, Wentworth Way York YO10 5DD Yorkshire United Kingdom 3 Department of Biology University of York, Wentworth Way York YO10 5DD Yorkshire United Kingdom |
AuthorAffiliation_xml | – name: 3 Department of Biology University of York, Wentworth Way York YO10 5DD Yorkshire United Kingdom – name: 1 Department of Computer Science University of York, Deramore Lane York YO10 5GH Yorkshire United Kingdom – name: 2 Centre for Novel Agricultural Products, Department of Biology University of York, Wentworth Way York YO10 5DD Yorkshire United Kingdom |
Author_xml | – sequence: 1 givenname: Jamie R. orcidid: 0000-0002-0715-8746 surname: Sykes fullname: Sykes, Jamie R. email: jamie.sykes@york.ac.uk organization: University of York, Deramore Lane – sequence: 2 givenname: Katherine J. surname: Denby fullname: Denby, Katherine J. organization: University of York, Wentworth Way – sequence: 3 givenname: Daniel W. surname: Franks fullname: Franks, Daniel W. organization: University of York, Wentworth Way |
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Cites_doi | 10.1109/CVPR52688.2022.01167 10.1016/j.inpa.2019.09.006 10.1007/s10994-019-05855-6 10.1007/978-3-030-58517-4_3 10.1094/PHYTO-01-11-0025 10.1094/PHP-2001-0709-01-RV 10.1109/CVPR.2009.5206848 10.1002/jgc4.1073 10.1109/CVPR52729.2023.01546 10.17501/2513258X.2020.4101 10.1139/b78-305 10.1002/aps3.11620 10.1109/LSP.2019.2951950 10.1126/science.1146961 10.1007/978-3-030-58452-8_13 10.1109/CVPR.2016.90 10.1007/978-3-319-24789-2_2 10.1007/s13313-021-00802-3 10.1109/ICCV.2017.324 10.1109/CVPR.2010.5540120 10.1109/CVPRW56347.2022.00157 10.1109/CVPR52688.2022.00088 10.31224/osf.io/yt9sx 10.1002/aps3.11559 10.1007/s10658-016-1027-2 10.1038/s41598-023-33042-0 |
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Copyright | 2025 The Author(s). published by Wiley Periodicals LLC on behalf of Botanical Society of America. 2025 The Author(s). Applications in Plant Sciences published by Wiley Periodicals LLC on behalf of Botanical Society of America. 2025. This work is published under http://creativecommons.org/licenses/by/4.0/ (the "License"). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. |
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This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa,... This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, . Despite... Premise This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa,... This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in cocoa, Theobroma... Abstract Premise This study investigates advanced training techniques to improve the performance of convolutional neural networks for disease detection in... |
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StartPage | e70010 |
SubjectTerms | Accuracy Application Classification Cocoa Computer vision Data collection Datasets Deep learning disease detection machine learning Mathematical functions Neural networks Plant pathology semi‐supervised learning |
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Title | Improving computer vision for plant pathology through advanced training techniques |
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