基于斑点分割图像的甘蔗叶片病害检测与严重程度估计

E. Ratnasari, M. Mentari, Ratih Kartika Dewi, R. V. Hari Ginardi
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引用次数: 34

摘要

约15%的甘蔗叶片因病害而残缺,严重影响甘蔗产量和质量。对植物病害进行早期检测和评估是控制病害、减少严重侵染的重要途径。提出了一种基于分段斑的叶片斑病严重程度识别模型。通过对L*a*b*色彩空间的a*分量进行阈值分割得到分割点。以最大标准差的分割点提取疾病点,利用分类技术检测疾病类型。该分类器是一种支持向量机(SVM),其颜色特征采用L*a*b*颜色空间,纹理特征采用灰度共生矩阵(GLCM)。该模型确定斑病类型的准确率为80%,误差严重估计平均值为5.73。
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Sugarcane leaf disease detection and severity estimation based on segmented spots image
About 15% of sugarcane leaf is defective because of diseases, it reduces the quantity and quality of sugarcane production significantly. Early detection and estimation of plant disease is a way to control these diseases and minimize the severe infection. This paper proposes a model to identify the severity of certain spot disease which appear on leaves based on segmented spot. The segmented spot is obtained by thresholding a* component of L*a*b* color space. Diseases spots are extracted with maximum standard deviation of segmented spot that use for detection the type of disease using classification techniques. The classifier is a Support Vector Machine (SVM) which uses L*a*b* color space for its color features and Gray Level Co-Occurrence Matrix (GLCM) as its texture features. This proposed model capable to determine the types of spot diseases with accuracy of 80% and 5.73 error severity estimation average.
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