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Turkish Journal of Agriculture and Forestry

Abstract

The detection and management of horticultural crop diseases is crucial for enhancing productivity, reducing costs, and promoting environmentally sustainable practices. Recently, various techniques have been developed for managing crop-related issues, including leaf diseases and pest control. A centralized control approach has been implemented for disease detection. This centralized system faced significant challenges, including concerns over data privacy and the costs associated with data migration. This study addressed the problems with centralized solutions through a federated learning approach enhanced by the attention mechanism of the vision transformer (ViT). We investigated the key features of the federated learning method and propose a deep learning model based on federated learning, utilizing the attention mechanism of the ViT to detect diseases in mango plant leaves. The study utilized an openaccess dataset of mango leaf diseases sourced from Kaggle. The performance of the federated model depended heavily on several factors, including data quality, the number of participating agents, their communication efficiency, and the number of local iterations. Although various pretrained models were tested to address these challenges, the lightweight ViT was the most effective, achieving an impressive accuracy rate of 98.99% in federated learning scenarios.

Author ORCID Identifier

VINAY GAUTAM: 0000-0002-0258-5132

PRABHJOT KAUR: 0000-0002-3539-0622

ANAND MISHRA: 0000-0002-2975-6982

ACHYUT SHANKAR: 0000-0003-3165-3293

LAXMAN SINGH: 0000-0001-8093-3609

DOI

10.55730/1300-011X.3325

Keywords

Deep learning, federated learning, crop leaf disease, horticulture

First Page

1079

Last Page

1094

Publisher

The Scientific and Technological Research Council of Türkiye (TÜBİTAK)

Creative Commons License

Creative Commons Attribution 4.0 International License
This work is licensed under a Creative Commons Attribution 4.0 International License.

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