利用高光谱反射数据对健康和患病植物进行区分,并确定患病植物的损害程度

H. Muhammed
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引用次数: 18

摘要

通过大量的研究工作,人们发现高光谱反射数据可以用于研究作物的病理状况。作物的病理状况对其光谱特性的影响可以在电磁波谱的可见光和/或近红外区域可见或检测到,这取决于作物的病理状况的光谱效应。正常(即健康)作物与遭受生理胁迫或疾病的其他作物之间的光谱特征差异,可以通过简单地将数据规范化来揭示和/或放大。这种效果可以通过将高光谱反射率数据归一化为零均值和单位方差向量(即数据白化)来实现。可以在这里执行频谱和/或波段归一化。在实验部分,我们使用了一个参考数据集,包括高光谱反射数据向量和相应的植物叶片损伤水平的田间测量数据。然后,将新的高光谱反射率数据归一化后;使用最近邻分类器将新数据与参考数据进行分类。在最近邻分类器中,相关系数和差的平方和被用作距离度量(两个向量之间)。分类结果与相应的田间叶损测量值具有较高的相关性,证实了该方法对此类分析的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using hyperspectral reflectance data for discrimination between healthy and diseased plants, and determination of damage-level in diseased plants
It has been found, through many research works, that hyperspectral reflectance data can be used for studying the pathological conditions of crops. The influence of the pathological status of a crop on its spectral characteristics can be visible or detectable in the visible and/or the near-infrared regions of the electromagnetic spectrum, depending on the spectral effects of the pathological conditions of the crop. Differences in the spectral characteristics between normal (i.e. healthy) crops and others suffering from physiological stress or disease, can be revealed and/or magnified by simply normalising the data properly. Such effects can be achieved by normalising the hyperspectral reflectance data into zero-mean and unit variance vectors (i.e. whitening the data). Spectral-wise and/or band-wise normalisation can be performed here. In the experimental part of this work we used a reference data set consisting of hyperspectral reflectance data vectors and the corresponding field measurements of leaf-damage level in the plants. Then, after normalising the new hyperspectral reflectance data; a nearest neighbour classifier is used to classify our new data against the reference data. The correlation coefficient and the sum of squared differences are used as distance measures (between two vectors) in the nearest neighbour classifier. High correlation is obtained between the classification results and the corresponding field leaf-damage measurements, confirming the usefulness and efficiency of this method for this type of analysis.
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