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Recognition of Tomato Late Blight by using DWT and Component Analysis

机译:基于小波变换和成分分析的番茄晚疫病识别

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摘要

Plant disease recognition concept is one of the successful and important applications of image processing and able to provide accurate and useful information to timely prediction and control of plant diseases. In the study, the wavelet based features computed from RGB images of late blight infected images and healthy images. The extracted features submitted to Principal Component Analysis (PCA), Kernel Principal Component Analysis (KPCA) and Independent Component Analysis performed (ICA) for reducing dimensions in feature data processing and classification. To recognize and classify late blight from healthy plant images are classified into two classes i.e. late blight infected or healthy. The Euclidean Distance measure is used to compute the distance by these two classes of training and testing dataset for tomato late blight recognition and classification. Finally, the three-component analysis is compared for late blight recognition accuracy. The Kernel Principal Component Analysis (KPCA) yielded overall recognition accuracy with 96.4%.
机译:植物病害识别概念是图像处理成功且重要的应用之一,能够为准确预测和控制植物病害提供准确而有用的信息。在这项研究中,基于小波的特征是根据晚疫病感染图像和健康图像的RGB图像计算得出的。提取的要素将提交给主成分分析(PCA),内核主成分分析(KPCA)和独立成分分析(ICA),以减少特征数据​​处理和分类中的维度。为了从健康的植物中识别和分类晚疫病,将图像分为两类,即晚疫病感染或健康。欧几里得距离度量用于通过这两类训练和测试数据集计算距离,以进行番茄晚疫病的识别和分类。最后,比较了三成分分析的晚疫病识别精度。内核主成分分析(KPCA)的总体识别精度为96.4%。

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