大豆叶病检测与分类系统

R. Ahilapriyadharshini, S. Arivazhagan, E. Francina, S. Supriya
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引用次数: 0

摘要

我国的经济高度依赖农业生产力,因此疾病检测在农业领域起着重要作用。该项目的目的是帮助农民检测大豆栽培中的病害类型。这个想法是确定叶子是健康的还是患病的,如果它受到影响,找出疾病并确定感染的百分比。在聚类算法的帮助下完成分割阶段,然后使用无监督学习算法进行分类。该系统使用颜色和纹理特征的组合进行训练。利用我们的方法,可以以平均91%的准确率识别大豆病害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leaf Disease Detection And Classification System For Soybean Culture
Our country’s economy highly depends on agricultural productivity and thus disease detection plays a major role in agricultural field. The aim of this project is to support the farmers for detecting the type of disease in soybean culture. The idea is to identify whether the leaf is healthy or diseased and if it is affected, finding out the disease and to identify the percentage of infection. The segmentation phase is completed with the help of clustering algorithm and followed by classification using unsupervised learning algorithm. The system is trained using combinations of color and texture features. Using our idea it is possible to identify the soybean disease with 91% accuracy in average.
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