Li Xiao-Long, Ma Zhan-Hong, Zhao Long-Lian, Li Jun-Hui, Wang Hai-Guang
College of Agriculture and Biotechnology, China Agricultural University, Beijing 100193, China.
College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2013 Oct;33(10):2661-5.
In the present study, near-infrared reflectance spectroscopy (NIRS) technology was applied to implement early diagnosis of two kinds of wheat rusts, i. e. wheat stripe rust and wheat leaf rust, by detecting wheat leaves as disease symptom has not appeared. The wheat leaves were divided into five categories including healthy leaves, leaves in the incubation period infected with P. strii formis f. sp. tritici, leaves showing symptom infected with P. strii formis f. sp. tritici, leaves in the incubation period infected with P. recondita f. sp. tritici and leaves showing symptom infected with P. recondita f. sp. tritici. Near infrared spectra of 150 wheat leaves were obtained using MPA spectrometer and then a model to identify the categories of wheat leaves was built using distinguished partial least squares (DPLS). For building the model, second-order derivative method was regarded as the best preprocessing method of the spectra and the spectral region 4000 - 8000 cm(-1) was regarded as the optimal spectral region. Using the model with different training sets and testing sets, the average identification rate of the training sets was 96.56% and the average identification rate of the testing sets was 91.85%. The results proved the model's stability. The optimal identification rates were obtained while the ratio of training set to testing set was 2 : 1 and the number of principal components was 10. The identification rate of the training set was 97.00% and the identification rate of the testing set was 96.00%. The results indicated that the identification method based on the NIRS technology developed in this study is feasible for early diagnosis of wheat stripe rust and wheat leaf rust.
在本研究中,应用近红外反射光谱(NIRS)技术,通过在小麦叶部病害症状未出现时对其进行检测,实现对两种小麦锈病(即小麦条锈病和小麦叶锈病)的早期诊断。将小麦叶分为五类,包括健康叶片、感染条形柄锈菌小麦专化型处于潜伏期的叶片、感染条形柄锈菌小麦专化型出现症状的叶片、感染隐匿柄锈菌小麦专化型处于潜伏期的叶片以及感染隐匿柄锈菌小麦专化型出现症状的叶片。使用MPA光谱仪获取了150片小麦叶的近红外光谱,然后采用判别偏最小二乘法(DPLS)建立了识别小麦叶类别的模型。在建立模型时,二阶导数法被视为光谱的最佳预处理方法,光谱区域4000 - 8000 cm(-1)被视为最佳光谱区域。使用不同训练集和测试集的模型,训练集的平均识别率为96.56%,测试集的平均识别率为91.85%。结果证明了该模型的稳定性。当训练集与测试集的比例为2 : 1且主成分数量为10时,获得了最佳识别率。训练集的识别率为97.00%,测试集的识别率为96.00%。结果表明,本研究开发的基于NIRS技术的识别方法对于小麦条锈病和小麦叶锈病的早期诊断是可行的。