Deep Learning for Coffee Leaf Diseases Detection in Precision Agriculture

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I. M. elezmazy
Mohamed Abouhawwash
Nihal N. Mostafa

Abstract

Coffee production faces challenges like climate change, drought, and biodiversity loss. Sustainable systems can improve crop yields and quality, but also threaten ecosystem function. AI can help classify and identify coffee leaf diseases, but traditional machine learning approaches struggle with big data. This study examines six deep learning models such as such as CNNs, ResNet50, MobileNet, GoogleNet, VGG16, and VGG19. The evaluation is done on the Kaggle dataset to classify between rust and miner diseases. MobileNet achieves superior results in terms of loss, accuracy, precision, recall, and F1-score with 0.0692, 0.973, 0.5625, 0.57143, 0.56693 respectively.

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How to Cite
elezmazy, I. M., Abouhawwash, M., & Mostafa, N. N. (2024). Deep Learning for Coffee Leaf Diseases Detection in Precision Agriculture. Optimization in Agriculture, 1, 129-136. https://doi.org/10.61356/j.oia.2024.1292
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Original Articles

How to Cite

elezmazy, I. M., Abouhawwash, M., & Mostafa, N. N. (2024). Deep Learning for Coffee Leaf Diseases Detection in Precision Agriculture. Optimization in Agriculture, 1, 129-136. https://doi.org/10.61356/j.oia.2024.1292

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