Application of machine learning in detection of blast disease in South Indian rice crops

S. Ramesh, D. Vydeki
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引用次数: 34

Abstract

It is a well-known fact that the quality and quantity of the rice crop is reduced due to plant disease. This paper proposes rice blast disease detection mechanism using Machine learning algorithm, to identify the disease in the early stage of the crop cultivation. The proposed method would find the blast disease and reduce the crop loss and hence increase the rice agriculture production in an effective manner. The images of the paddy field are captured and eight features are extracted to distinguish the healthy and the disease affected leaves. The proposed machine learning based classification methodology includes KNN and ANN. The performance of these two classification techniques is compared using an appropriate confusion matrix. The simulation results show that KNN based classification method provides an accuracy of 85% for the blast affected leaf images and 86% for the normal leaf images. The accuracy is improved to 99% and 100% respectively for the ANN based classification mechanisms.
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机器学习在南印度水稻稻瘟病检测中的应用
众所周知,由于植物病害,水稻作物的质量和数量都下降了。本文提出了利用机器学习算法的稻瘟病检测机制,在作物栽培的早期阶段识别病害。该方法可以有效地发现稻瘟病,减少作物损失,从而提高水稻农业产量。采集稻田图像,提取8个特征来区分健康叶片和病害叶片。提出的基于机器学习的分类方法包括KNN和ANN。使用适当的混淆矩阵比较了这两种分类技术的性能。仿真结果表明,基于KNN的分类方法对爆炸影响叶片图像的分类准确率为85%,对正常叶片图像的分类准确率为86%。对于基于人工神经网络的分类机制,准确率分别提高到99%和100%。
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