Siamese Network-Based Lightweight Framework for Tomato Leaf Disease Recognition

Article


Thuseethan, Selvarajah, Vigneshwaran, Palanisamy, Joseph, Charles and Wimalasooriya, Chathrie. 2024. "Siamese Network-Based Lightweight Framework for Tomato Leaf Disease Recognition." Computers. 13 (12). https://doi.org/10.3390/computers13120323
Article Title

Siamese Network-Based Lightweight Framework for Tomato Leaf Disease Recognition

ERA Journal ID212147
Article CategoryArticle
AuthorsThuseethan, Selvarajah, Vigneshwaran, Palanisamy, Joseph, Charles and Wimalasooriya, Chathrie
Journal TitleComputers
Journal Citation13 (12)
Article Number323
Number of Pages15
Year2024
PublisherMDPI AG
Place of PublicationSwitzerland
ISSN2073-431X
Digital Object Identifier (DOI)https://doi.org/10.3390/computers13120323
Web Address (URL)https://www.mdpi.com/2073-431X/13/12/323
Abstract

In this paper, a novel Siamese network-based lightweight framework is proposed for automatic tomato leaf disease recognition. This framework achieves the highest accuracy of 96.97% on the tomato subset obtained from the PlantVillage dataset and 95.48% on the Taiwan tomato leaf disease dataset. Experimental results further confirm that the proposed framework is effective with imbalanced and small data. The backbone network integrated with this framework is lightweight with approximately 2.9629 million trainable parameters, which is second to SqueezeNet and significantly lower than other lightweight deep networks. Automatic tomato disease recognition from leaf images is vital to avoid crop losses by applying control measures on time. Even though recent deep learning-based tomato disease recognition methods with classical training procedures showed promising recognition results, they demand large labeled data and involve expensive training. The traditional deep learning models proposed for tomato disease recognition also consume high memory and storage because of a high number of parameters. While lightweight networks overcome some of these issues to a certain extent, they continue to show low performance and struggle to handle imbalanced data.

Keywordsplant disease; tomato disease; Siamese network; lightweight; imbalanced data
Contains Sensitive ContentDoes not contain sensitive content
ANZSRC Field of Research 20203108. Plant biology
Byline AffiliationsCharles Darwin University
Sabaragamuwa University of Sri Lanka
School of Business
University of Otago, New Zealand
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https://research.usq.edu.au/item/zv078/siamese-network-based-lightweight-framework-for-tomato-leaf-disease-recognition

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