植物病害鉴定的比较研究

Shriroop C. Madiwalar, M. Wyawahare
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引用次数: 37

摘要

炭疽病和叶斑病(红锈病)是影响芒果植株的常见病害。由于芒果具有重要的经济价值,这些病害的检测对于避免流行和产量损失至关重要。提出了一种利用芒果叶片彩色图像进行植物病害识别的机器视觉方法。该方法包括使用YCbCr转换图像,并创建输入图像的纹理和颜色特征的特征向量,这些特征向量在测试阶段被馈送到分类器。采用GLCM、基于颜色的技术和Gabor滤波器进行纹理和颜色特征提取。对最小距离分类器和支持向量机的分类结果进行了比较。对特征提取技术进行了分析,以获得每种技术的单独结果。在86张图像的数据库上,最小距离分类器和支持向量机的分类准确率分别为79.16%和83.34%。
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Plant disease identification: A comparative study
Anthracnose and leaf spot (red rust) are the common diseases affecting the mango plant. Mango being economically important, the detection of these diseases is critical for avoiding epidemics and loss of yield. A machine vision approach has been proposed for plant disease identification using colour images of mango leaves. This approach included using YCbCr converted image and creating a feature vector of textural and colour features of the input images which are fed to the classifier during the testing phase. GLCM, colour based technique and Gabor filter were used for texture and colour feature extraction. Comparison of results obtained using a Minimum distance classifier and using Support Vector Machine (SVM) has been done. Analysis of the feature extraction techniques was performed to obtain individual results for each technique. The overall results gave a classification accuracy of 79.16% and 83.34% for Minimum distance classifier and Support Vector Machine respectively over a database of 86 images.
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