Digital image processing technique for palm oil leaf disease detection using multiclass SVM classifier

Ahmad Nor Ikhwan Masazhar, M. Kamal
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引用次数: 40

Abstract

Disease in oil palm sector is one of the major concerns cause it effects the production and economy losses to Malaysia. The problem of disease that arises in oil palm plantation are. Nowadays plant diseases detection has received a lot of attention in monitoring the symptoms at earlier stage of plant growth. This work presents the use of digital image processing technique for detection and classification of oil palm leaf disease symptoms. Here, the disease detection used k-means clustering and multiclass SVM classifier to determine two palm oil diseases based on the symptoms of the disease through its leaf. By using k-means clustering technique, thirteen types of features are extracted from the leaf images. The classification of the disease is carried out by using multiclass SVM classifier. The detection shows that SVM achieves accuracy of 97% for Chimaera and 95% for Anthracnose.
基于多类SVM分类器的棕榈油叶病检测数字图像处理技术
油棕部门的疾病是主要问题之一,因为它影响到马来西亚的生产和经济损失。油棕种植园出现的疾病问题是。植物病害检测在植物生长早期的症状监测方面受到了广泛的关注。这项工作提出了使用数字图像处理技术检测和分类油棕叶病的症状。在这里,病害检测使用k-means聚类和多类SVM分类器,根据棕榈油叶片的病害症状来确定两种棕榈油病害。利用k-均值聚类技术,从叶片图像中提取了13种特征。采用多类SVM分类器对病害进行分类。检测结果表明,SVM对Chimaera的准确率为97%,对炭疽病的准确率为95%。
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