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Grape Leaf Disease Identification using Machine Learning Techniques

机译:使用机器学习技术葡萄叶疾病识别

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Having diseases is quite natural in crops due to changing climatic and environmental conditions. Diseases affect the growth and produce of the crops and often difficult to control. To ensure good quality and high production, it is necessary to have accurate disease diagnosis and control actions to prevent them in time. Grape which is widely grown crop in India and it may be affected by different types of diseases on leaf, stem and fruit. Leaf diseases which are the early symptoms caused due to fungi, bacteria and virus. So, there is a need to have an automatic system that can be used to detect the type of diseases and to take appropriate actions. We have proposed an automatic system for detecting the diseases in the grape vines using image processing and machine learning technique. The system segments the leaf (Region of Interest) from the background image using grab cut segmentation method. From the segmented leaf part the diseased region is fruther segmented based on two different methods such as global thresholding and using semi-supervised technique. The features are extracted from the segmented diseased part and it has been classified as healthy, rot, esca, and leaf blight using different machine learning techniques such as Support Vector Machine (SVM), adaboost and Random Forest tree. Using SVM we have obtained a better testing accuracy of 93%.
机译:由于气候和环境条件不断变化,患有疾病在作物中是非常自然的。疾病影响农作物的生长和生产,通常难以控制。为确保良好的质量和高生产,有必要具有准确的疾病诊断和控制行动,以防止它们。在印度广泛种植的作物葡萄可能受到叶,茎和果实不同类型的疾病影响。叶片疾病是由于真菌,细菌和病毒引起的早期症状。因此,需要具有自动系统,可用于检测疾病类型并采取适当的操作。我们提出了一种用于使用图像处理和机器学习技术检测葡萄藤中的疾病的自动系统。使用抓取分割方法,系统区段从背景图像中叶(感兴趣的区域)。从分段的叶片部分基于两种不同的方法(如全局阈值和使用半监督技术),患病区域是Futher分段。使用不同的机器学习技术(如支持向量机(SVM),Adaboost和随机林树等不同的机器学习技术,从分段患病部件中提取并被分类为健康,腐烂,ESCA和叶子枯萎。使用SVM我们获得了更好的测试精度为93%。

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