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Using hyperspectral imaging to discriminate yellow leaf curl disease in tomato leaves

机译:使用高光谱成像来区分番茄叶中的黄叶卷曲疾病

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This paper investigated the possibility of discriminating tomato yellow leaf curl disease by a hyperspectral imaging technique. A hyperspecral imaging system collected hyperspectral images of both healthy and infected tomato leaves. The reflectance spectra, first derivative reflectance spectra and absolute reflectance difference spectra in the wavelength range of 500-1000 nm of both background and the leaf area were analyzed to select sensitive wavelengths and band ratios. 853 nm was selected to create a mask image for background segmentation, while 720 nm from the reflectance spectra, four peaks (560, 575, 712, and 729 nm) from the first derivative spectra and, four wavelengths with higher values (586, 720 nm) and lower values (690, 840 nm) in the absolute difference spectra were selected as a set of sensitive wavelengths. Four band ratio images (560/575, 712/729, 586/690, and 720/840 nm) were compared with four widely used vegetation indices (VIs). 24 texture features were extracted using grey level co-occurrence matrix (GLCM), respectively. The performance of each feature was evaluated by receiver operator characteristic (ROC) curve analysis. The best threshold values of each feature were calculated by Yonden's index. Mean value of correlation (COR_MEAN) extracted from the band ratio image (720/840 nm) had the best performance, whose AUC value was 1.0. The discrimination result for a validation set based on its best threshold value was 100%. This research also demonstrated that multispectral images at 560, 575 and 720 nm have a potential for detecting tomato yellow leaf curl virus infection in field applications.
机译:本文研究了通过高光谱成像技术鉴别番茄黄叶卷曲疾病的可能性。 Hyperspecral成像系统收集了健康和受感染的番茄叶的高光谱图像。分析了在300-1000nm的波长范围内的反射光谱,第一导数反射谱和绝对反射差异谱分析以选择敏感波长和带比。选择853nm以创建背景分割的掩模图像,而来自反射谱谱的720nm,来自第一导数谱的四个峰(560,575,712和729nm),具有较高值的​​四个波长(586,720选择绝对差异光谱中的NM)和较低的值(690,840nm)作为一组敏感波长。将四个带比图像(560/575,712/729,586/690和720/840nm)与四种广泛使用的植被指数进行比较(VI)。 24使用灰度共发生矩阵(GLCM)提取纹理特征。通过接收器操作员特征(ROC)曲线分析评估每个特征的性能。 yonden索引计算每个功能的最佳阈值。从带比图像(720/840nm)中提取的相关性(cor_mean)的平均值具有最佳性能,其AUC值为1.0。基于其最佳阈值的验证集的歧视结果为100%。该研究还证明,560,575和720nm处的多光谱图像具有在现场应用中检测番茄黄叶卷曲病毒感染的可能性。

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