Enhanced deep learning model architecture for plant disease detection in Chilli plants

Main Article Content

Sultanul Arifeen Hamim
Akinul Islam Jony
https://orcid.org/0000-0002-2942-6780

Abstract

A new deep-learning model for classifying and detecting plant diseases in chilli plants is described. It is built on a modified version of the MobileNet architecture. The model overcomes conventional diagnostic tools’ high computing costs and restricted adaptability by combining sophisticated optimisation models and reliable training procedures. The model considerably reduces the time and resources needed for an accurate diagnosis while effectively managing complicated illness presentations, with a diagnostic accuracy of 97.18%. Using the chilli leaf picture dataset, data augmentation, and finetuning techniques, the model shows promise for real-time disease diagnosis in agricultural environments. The study underscores the importance of high-quality image data and extensive training datasets, calling for further evaluation across various climatic and environmental conditions to ensure robustness and adaptability. This research opens new opportunities for AI-based models in diverse agricultural contexts, potentially leading to significant advancements in precision farming.

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How to Cite
Hamim, S.A. and Jony, A.I., 2024. Enhanced deep learning model architecture for plant disease detection in Chilli plants. Journal of Edge Computing [Online], 3(2), pp.136–146. Available from: https://doi.org/10.55056/jec.758 [Accessed 18 January 2025].
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Articles

How to Cite

Hamim, S.A. and Jony, A.I., 2024. Enhanced deep learning model architecture for plant disease detection in Chilli plants. Journal of Edge Computing [Online], 3(2), pp.136–146. Available from: https://doi.org/10.55056/jec.758 [Accessed 18 January 2025].

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