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Identification and Disease Index Inversion of Wheat Stripe Rust and Wheat Leaf Rust Based on Hyperspectral Data at Canopy Level

机译:基于冠层水平高光谱数据的小麦条锈病和小麦叶锈病鉴定及病害指数反演

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Stripe rust and leaf rust with similar symptoms are two important wheat diseases. In this study, to investigate a method to identify and assess the two diseases, the canopy hyperspectral data of healthy wheat, wheat in incubation period, and wheat in diseased period of the diseases were collected, respectively. After data preprocessing, three support vector machine (SVM) models for disease identification and six support vector regression (SVR) models for disease index (DI) inversion were built. The results showed that the SVM model based on wavelet packet decomposition coefficients with the overall identification accuracy of the training set equal to 99.67% and that of the testing set equal to 82.00% was better than the other two models. To improve the identification accuracy, it was suggested that a combination model could be constructed with one SVM model and two models built usingK-nearest neighbors (KNN) method. Using the DI inversion SVR models, the satisfactory results were obtained for the two diseases. The results demonstrated that identification and DI inversion of stripe rust and leaf rust can be implemented based on hyperspectral data at the canopy level.
机译:具有相似症状的条锈和叶锈是两种重要的小麦疾病。在这项研究中,为了研究鉴定和评估这两种疾病的方法,分别收集了健康小麦,潜伏期小麦和患病时期小麦的冠层高光谱数据。经过数据预处理后,建立了三个用于疾病识别的支持向量机(SVM)模型和六个用于疾病指数(DI)反演的支持向量回归(SVR)模型。结果表明,基于小波包分解系数的支持向量机模型的训练集总识别精度为99.67%,测试集的总识别精度为82.00%,优于其他两个模型。为了提高识别的准确性,建议可以使用一个SVM模型和两个使用K最近邻(KNN)方法构建的模型来构建组合模型。使用DI反演SVR模型,对两种疾病均获得了满意的结果。结果表明,基于冠层水平的高光谱数据,可以实现条锈和叶锈的识别和DI反演。

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