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[利用高光谱成像和判别分析识别黄瓜病害]

[Identification of cucumber disease using hyperspectral imaging and discriminate analysis].

作者信息

Chai A-Li, Liao Ning-Fang, Tian Li-Xun, Shi Yan-Xia, Li Bao-Ju

机构信息

Institute of Vegetables and Flowers, Chinese Academy of Agricultural Sciences, Beijing 100081, China.

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2010 May;30(5):1357-61.

Abstract

Hyperspectral imaging (400-720 nm) and discriminate analysis were investigated for the detection of normal and diseased cucumber leaf samples with powdery mildew (Sphaerotheca fuliginea), angular leaf spot (Pseudomopnas syringae), downy mildew (Pseudoperonospora cubensis), and brown spot (Corynespora cassiicola). A hyperspectral imaging system was es tablished to acquire and pre-process leaf images, as well as to extract leaf spectral properties. Owing to the complexity of the original spectral data, stepwise discriminate and canonical discriminate were executed to reduce the numerous spectral information, in order to decrease the amount of calculation and improve the accuracy. By the stepwise discriminate we selected 12 optimal wavelengths from the original 55 wavelengths, and after the canonical discriminate, the 55 wavelengths were reduced to 2 canonical variables. Then the discriminate models were developed to classify the leaf samples. The result shows that the stepwise discriminate model achieved classification accuracies of 100% and 94% for the training and testing sets, respectively. For the canonical model, the classification accuracies for the training and testing sets were both 100%. These results indicated that it is feasible to identify and classify cucumber diseases using hyperspectral imaging technology and discriminate analysis. The preliminary study, which was done in a closed room with restrictions to avoid interference of the field environment, showed that there is a potential to establish an online field application in cucumber disease detection based on visible spectroscopy.

摘要

利用高光谱成像(400 - 720纳米)和判别分析技术,对患有白粉病(瓜白粉菌)、角斑病(丁香假单胞菌)、霜霉病(古巴假霜霉)和褐斑病(多主棒孢)的正常和患病黄瓜叶片样本进行检测。建立了一个高光谱成像系统,用于采集和预处理叶片图像,并提取叶片光谱特性。由于原始光谱数据的复杂性,采用逐步判别和典型判别方法来减少大量的光谱信息,以减少计算量并提高准确性。通过逐步判别,从原始的55个波长中选择了12个最佳波长,经过典型判别后,55个波长被缩减为2个典型变量。然后建立判别模型对叶片样本进行分类。结果表明,逐步判别模型对训练集和测试集的分类准确率分别达到了100%和94%。对于典型模型,训练集和测试集的分类准确率均为100%。这些结果表明,利用高光谱成像技术和判别分析来识别和分类黄瓜病害是可行的。在封闭房间内进行的初步研究,排除了田间环境干扰,结果表明基于可见光谱在黄瓜病害检测中建立在线田间应用具有潜力。

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