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Classification of watermelon leaf diseases using neural network analysis

机译:基于神经网络分析的西瓜叶病分类

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This paper mainly discussed the process to classify Anthracnose and Downey Mildew, watermelon leaf diseases using neural network analysis. A few of infected leaf samples were collected and they were captured using a digital camera with specific calibration procedure under controlled environment. The classification on the watermelon's leaf diseases is based on color feature extraction from RGB color model where the RGB pixel color indices have been extracted from the identified Regions of Interest (ROI). The proposed automated classification model involved the process of diseases classification using Statistical Package for the Social Sciences (SPSS) and Neural Network Pattern Recognition Toolbox in MATLAB. Determinations in this work have shown that the type of leaf diseases achieved 75.9% of accuracy based on its RGB mean color component.
机译:本文主要讨论了使用神经网络分析对炭疽病和唐尼霉,西瓜叶病进行分类的过程。收集了一些被感染的叶片样品,并在受控环境下使用具有特定校准程序的数码相机将其捕获。西瓜叶病的分类基于从RGB颜色模型中提取颜色特征的功能,其中RGB像素颜色索引已从已识别的关注区域(ROI)中提取。所提出的自动分类模型涉及使用社会科学统计软件包(SPSS)和MATLAB中的神经网络模式识别工具箱进行的疾病分类过程。这项工作的确定表明,基于其RGB平均颜色分量,叶片疾病的类型达到了75.9%的准确度。

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