Detection and Classification of Diseases of Banana Plant Using Local Binary Pattern and Support Vector Machine

Akshaya Aruraj, Ashish Alex, M. Subathra, N. Sairamya, S. George, S. Ewards
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引用次数: 14

Abstract

Banana plantation is a commercial agricultural practice of huge significance especially in Asian and African countries. Banana production is affected by natural calamities and plant diseases. But plant diseases present a constant threat to the farmers affecting the quantity and quality of the banana cultivation. From the last decade, the image processing techniques and machine learning algorithms have been broadly used for identification and classification of infections in plants. In this work, texture pattern techniques for identification and classification of diseases in banana plants is introduced. The proposed methodology consists of two primary phases; (a) extraction of texture features from using local binary pattern (LBP); (b) classification of banana plant diseases and healthy banana plant. The texture features using LBP are extracted from an enhanced input image. The extracted features are fed to Support Vector Machine (SVM) and K-nearest neighbor (KNN) for final banana plant disease classification. The proposed technique is tested on the Plant Village dataset for the classification of two different experimental cases (i) Healthy-Black Sigatoka and (ii) Healthy-Cordana leaf spot. The proposed methodology attained an accuracy of 89.1 % and 90.9% for two experimental cases using SVM classifier.
基于局部二值模式和支持向量机的香蕉病害检测与分类
香蕉种植是一种具有重大意义的商业农业实践,特别是在亚洲和非洲国家。香蕉生产受到自然灾害和植物病害的影响。但植物病害是影响香蕉种植数量和质量的持续威胁。近十年来,图像处理技术和机器学习算法被广泛用于植物感染的识别和分类。本文介绍了香蕉植物的纹理图谱技术在病害鉴定和分类中的应用。拟议的方法包括两个主要阶段;(a)利用局部二值模式(LBP)提取纹理特征;(b)香蕉植物病害和健康香蕉植物的分类。利用LBP从增强的输入图像中提取纹理特征。将提取的特征馈送给支持向量机(SVM)和k近邻(KNN)进行最终的香蕉植物病害分类。在Plant Village数据集上对所提出的技术进行了测试,以对两种不同的实验案例(i)健康-黑叶斑病和(ii)健康- cordana叶斑病进行分类。在两个使用SVM分类器的实验案例中,该方法的准确率分别达到了89.1%和90.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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