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Spectrum and Image Texture Features Analysis for Early Blight Disease Detection on Eggplant Leaves

机译:茄子叶片早疫病检测的光谱和图像纹理特征分析

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摘要

This study investigated both spectrum and texture features for detecting early blight disease on eggplant leaves. Hyperspectral images for healthy and diseased samples were acquired covering the wavelengths from 380 to 1023 nm. Four gray images were identified according to the effective wavelengths (408, 535, 624 and 703 nm). Hyperspectral images were then converted into RGB, HSV and HLS images. Finally, eight texture features (mean, variance, homogeneity, contrast, dissimilarity, entropy, second moment and correlation) based on gray level co-occurrence matrix (GLCM) were extracted from gray images, RGB, HSV and HLS images, respectively. The dependent variables for healthy and diseased samples were set as 0 and 1. K-Nearest Neighbor (KNN) and AdaBoost classification models were established for detecting healthy and infected samples. All models obtained good results with the classification rates (CRs) over 88.46% in the testing sets. The results demonstrated that spectrum and texture features were effective for early blight disease detection on eggplant leaves.
机译:这项研究调查了光谱和纹理特征,以检测茄子叶片上的早疫病。获得了健康和患病样品的高光谱图像,其覆盖了380至1023 nm的波长。根据有效波长(408、535、624和703 nm)识别出四个灰度图像。然后将高光谱图像转换为RGB,HSV和HLS图像。最后,分别从灰度图像,RGB,HSV和HLS图像中提取了基于灰度共生矩阵(GLCM)的八个纹理特征(均值,方差,均匀性,对比度,不相似性,熵,第二矩和相关性)。将健康和患病样本的因变量设置为0和1。建立了K最近邻(KNN)和AdaBoost分类模型来检测健康和感染样本。所有模型在测试集中的分类率(CR)均超过88.46%,均获得了良好的效果。结果表明,光谱和纹理特征对于茄子叶上的早疫病检测是有效的。

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