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Quantitative identification of crop disease and nitrogen-water stress in winter wheat using continuous wavelet analysis

机译:连续小波分析定量鉴定冬小麦作物病害和氮水分胁迫

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It is necessary to quantitatively identify different diseases and nitrogen-water stress for the guidance in spraying specific fungicides and fertilizer applications. The winter wheat diseases, in combination with nitrogen-water stress, are therefore common causes of yield loss in winter wheat in China. Powdery mildew (Blumeria graminis) and stripe rust (Puccinia striiformis f. sp. Tritici) are two of the most prevalent winter wheat diseases in China. This study investigated the potential of continuous wavelet analysis to identify the powdery mildew, stripe rust and nitrogen-water stress using canopy hyperspectral data. The spectral normalization process was applied prior to the analysis. Independent t-tests were used to determine the sensitivity of the spectral bands and vegetation index. In order to reduce the number of wavelet regions, correlation analysis and the independent t-test were used in conjunction to select the features of greatest importance. Based on the selected spectral bands, vegetation indices and wavelet features, the discriminate models were established using Fisher’s linear discrimination analysis (FLDA) and support vector machine (SVM). The results indicated that wavelet features were superior to spectral bands and vegetation indices in classifying different stresses, with overall accuracies of 0.91, 0.72, and 0.72 respectively for powdery mildew, stripe rust and nitrogen-water by using FLDA, and 0.79, 0.67 and 0.65 respectively by using SVM. FLDA was more suitable for differentiating stresses in winter wheat, with respective accuracies of 78.1%, 95.6% and 95.7% for powdery mildew, stripe rust, and nitrogen-water stress. Further analysis was performed whereby the wavelet features were then split into high-scale and low-scale feature subsets for identification. The accuracies of high-scale and low-scale features with an overall accuracy (OA) of 0.61 and 0.73 respectively were lower than those of all wavelet features with an OA of 0.88. The detection of the severity of stripe rust using this method showed an enhanced reliability (R2 =0.828).
机译:必须定量确定不同的疾病和氮水胁迫,以指导喷洒特定的杀菌剂和肥料。因此,冬小麦疾病与氮水分胁迫相结合,是中国冬小麦单产下降的常见原因。白粉病(Blumeria graminis)和条锈病(Puccinia striiformis f。sp。Tritici)是中国冬小麦最普遍的两种疾病。这项研究调查了连续小波分析利用冠层高光谱数据识别白粉病,条锈和氮水胁迫的潜力。在分析之前应用光谱归一化过程。使用独立的t检验确定光谱带和植被指数的敏感性。为了减少小波区域的数量,结合使用相关分析和独立的t检验来选择最重要的特征。基于选定的光谱带,植被指数和小波特征,使用费舍尔线性判别分析(FLDA)和支持向量机(SVM)建立了判别模型。结果表明,小波特征在分类不同应力方面优于光谱带和植被指数,使用FLDA分别对白粉病,条锈病和氮水的总准确度分别为0.91、0.72和0.72,分别为0.79、0.67和0.65分别使用SVM。 FLDA更适合于区分冬小麦的胁迫,白粉病,条锈病和氮水胁迫的准确度分别为78.1%,95.6%和95.7%。进行进一步的分析,然后将小波特征分解为高阶和低阶特征子集以进行识别。总体精度(OA)为0.61和0.73的高尺度和低尺度特征的精度低于OA为0.88的所有小波特征的精度。使用此方法检测条锈病的严重性显示出更高的可靠性(R2 = 0.828)。

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