A New Segmentation method for Plant Disease Diagnosis

K. Gurrala, Lenin Yemineni, Krupa Spandan Raj Rayana, Lokesh Kumar Vajja
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引用次数: 8

Abstract

Detecting plant diseases automatically with the help of symptoms present on leaves at earlier stage yields more productivity in agriculture. In this paper, a novel plant disease diagnosis method is proposed for the plants using image processing techniques and SVM classifier. Here, disease diagnosis is carried based on features extracted from the segmented image after pre-processing the image of the leaves which are affected with diseases. Modified color processing detection algorithm (CPDA) is used as segmentation method to extract the features. SVM classifier is trained with a dataset of about 100 images of diseased leaves to identify the diseases like anthracnose, leafspot, leafblight, scab. For disease detection, the performance of proposed segmentation technique is better when compared to the K-means clustering segmentation.
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植物病害诊断的一种新的分割方法
利用叶片早期症状自动检测植物病害,可提高农业生产效率。本文提出了一种基于图像处理技术和支持向量机分类器的植物病害诊断方法。在这里,对患病叶片图像进行预处理后,根据分割图像提取的特征进行疾病诊断。采用改进的颜色处理检测算法(CPDA)作为分割方法提取特征。SVM分类器使用约100张病叶图像数据集进行训练,识别出炭疽病、叶斑病、叶枯病、痂病等病害。对于疾病检测,与k均值聚类分割相比,本文提出的分割技术的性能更好。
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