An Intelligent System-Based Coffee Plant Leaf Disease Recognition Using Deep Learning Techniques on Rwandan Arabica Dataset

Eric Hitimana, Omar Janvier Sinayobye, J. C. Ufitinema, Jane Mukamugema, Peter Rwibasira, Theoneste Murangira, Emmanuel Masabo, Lucy Cherono Chepkwony, Marie Cynthia Abijuru Kamikazi, Jeanne Aline Ukundiwabo Uwera, S. M. Mvuyekure, Gaurav Bajpai, Jackson Ngabonziza
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Abstract

Rwandan coffee holds significant importance and immense value within the realm of agriculture, serving as a vital and valuable commodity. Additionally, coffee plays a pivotal role in generating foreign exchange for numerous developing nations. However, the coffee plant is vulnerable to pests and diseases weakening production. Farmers in cooperation with experts use manual methods to detect diseases resulting in human errors. With the rapid improvements in deep learning methods, it is possible to detect and recognize plan diseases to support crop yield improvement. Therefore, it is an essential task to develop an efficient method for intelligently detecting, identifying, and predicting coffee leaf diseases. This study aims to build the Rwandan coffee plant dataset, with the occurrence of coffee rust, miner, and red spider mites identified to be the most popular due to their geographical situations. From the collected coffee leaves dataset of 37,939 images, the preprocessing, along with modeling used five deep learning models such as InceptionV3, ResNet50, Xception, VGG16, and DenseNet. The training, validation, and testing ratio is 80%, 10%, and 10%, respectively, with a maximum of 10 epochs. The comparative analysis of the models’ performances was investigated to select the best for future portable use. The experiment proved the DenseNet model to be the best with an accuracy of 99.57%. The efficiency of the suggested method is validated through an unbiased evaluation when compared to existing approaches with different metrics.
基于卢旺达阿拉比卡数据集的深度学习技术的基于智能系统的咖啡植物叶病识别
卢旺达咖啡在农业领域具有重要意义和巨大价值,是一种重要和有价值的商品。此外,咖啡在为许多发展中国家创造外汇方面发挥着关键作用。然而,咖啡树很容易受到病虫害的影响,从而削弱了产量。农民与专家合作,使用人工方法检测人为错误造成的疾病。随着深度学习方法的快速发展,可以检测和识别作物病害,以支持作物产量的提高。因此,开发一种高效的方法来智能检测、识别和预测咖啡叶病害是一项重要的任务。本研究旨在建立卢旺达咖啡植物数据集,由于其地理位置,咖啡锈病,矿工和红蜘蛛螨的发生被确定为最受欢迎的。从收集的37,939张图像的咖啡叶子数据集中,预处理和建模使用了五种深度学习模型,如InceptionV3, ResNet50, Xception, VGG16和DenseNet。训练、验证和测试比例分别为80%、10%和10%,最多10个epoch。对各型号的性能进行了对比分析,以选择最适合未来便携式使用的型号。实验证明,DenseNet模型的准确率为99.57%,是最好的。通过与不同度量的现有方法进行比较,验证了所建议方法的有效性。
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