Mehran University Research Journal of Engineering and Technology (Apr 2024)

Enhancing potato crop yield with AI-powered CNN-based leaf disease detection and tracking

  • Mudassir Iftikhar,
  • Irfan Ali Kandhro,
  • Asadullah Kehar,
  • Neha Kausar

DOI
https://doi.org/10.22581/muet1982.3034
Journal volume & issue
Vol. 43, no. 2
pp. 123 – 132

Abstract

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While plant diseases continue to have a severe impact on food production, farmers face a formidable challenge in trying to meet the escalating demands of a population that is expanding quickly for agricultural items like potatoes. Despite spending billions on disease management, farmers frequently struggle to effectively control disease without the aid of cutting-edge technology. The paper examines a disease diagnosis method based on deep learning. To be more precise, it uses a Convolutional Neural Network (CNN) method for the disease's detection and classification. This study examines the impact of data augmentation while conducting an extensive performance evaluation of the hyper-parameter in the setting of detecting plant diseases with a focus on potatoes. The experimental findings demonstrate the effectiveness of the suggested model's 98% accuracy. Considering growing global issues, this research aims to open new pathways for more efficient plant disease management and, eventually, increase agricultural output.