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首页> 外文期刊>International journal of computational vision and robotics >Detection and classification of fungal disease with Radon transform and support vector machine affected on cereals
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Detection and classification of fungal disease with Radon transform and support vector machine affected on cereals

机译:利用Radon变换和支持向量机对谷物进行真菌病的检测和分类。

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摘要

This paper describes Radon transform and SVM-based recognition and classification of visual symptoms affected by fungal disease. Algorithms are developed to acquire and process colour images of fungal disease affected on cereals like wheat, maize and jowar. Different types of fungal disease symptoms namely, leaf blight, leaf spot, powdery mildew, leaf rust, smut are considered for the study. The developed methodology consists of two phases. In the first phase, Radon transformation and projection algorithm is used to project patches (affected area) on the surface of cereal and detect whether the cereal is fungal affected or normal. In the second phase, fungal affected symptoms are classified using support vector machine (SVM) classifier. The fungal affected regions are segmented using k-means segmentation. Colour and shape features are extracted from affected regions and then used as inputs to SVM classifier. Classification accuracies of over 80.83% are obtained using colour features, 85% are obtained using shape features and 90.83% are obtained using combined colour and shape features.
机译:本文介绍了Radon变换和基于SVM的识别和分类受真菌病影响的视觉症状的方法。开发了算法,以获取和处理受谷物影响的真菌疾病的彩色图像,例如小麦,玉米和乔瓦尔。本研究考虑了不同类型的真菌病症状,例如叶枯病,叶斑病,白粉病,叶锈病,黑穗病。所开发的方法包括两个阶段。在第一阶段,使用Radon变换和投影算法在谷物表面上投射斑块(受影响的区域),并检测谷物是否受到真菌影响或正常。在第二阶段,使用支持向量机(SVM)分类器对真菌感染的症状进行分类。使用k均值分割对真菌受影响的区域进行分割。从受影响的区域提取颜色和形状特征,然后将其用作SVM分类器的输入。使用颜色特征可获得超过80.83%的分类准确度,使用形状特征可获得85%的分类准确度,并且使用组合的颜色和形状特征可获得90.83%的分类准确度。

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