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A new methodology for the discrimination of plant species and their varieties using hyperspectral data: application on vetch and lentil

机译:利用高光谱数据鉴别植物物种及其品种的新方法:在拔血和扁豆上的应用

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This paper presents a new methodology for the discrimination of plant species and their varieties using hyperspectral data. The concept lies on the combination of spectral pre-processing algorithms (SPPA) that enhance spectral discrimination between species and their varieties. SPPA use as input a single spectral signature and transform it according to the SPPA function. A k-step combination of SPPA uses k pre-processing algorithms serially. Initially each spectral signature is used as input to the first SPPA. The result of this SPPA is used as input to the second SPPA, and so on until the desired pre-processed signatures are reached. These signatures are then discriminated by applying spectral matching algorithms. The performance of the combination is evaluated based on the number of correctly matched signatures. In this work a k-step combination of SPPA has been set up, with k ranging from 1 to 3. The following SPPA have been investigated: vector normalization, Fourier transformation, Logarithm transformation, Kubelka-Munck transformation, derivatives, continuum removal, band depth, value normalization, n order square root transformation, and smoothing. There is a very large number of possible combinations of the aforementioned SPPAs, thus a Simple Genetic Algorithm has been used for finding optimum combinations. The input hyperspectral data were the spectral signatures of 9 varieties of vetches and 9 varieties of lentils, measured by the GER1500 spectroradiometer. For all the samples, the spectral signatures were measured at two slightly different times in the growing season. The results showed that several combinations exist which can successfully discriminate and label the spectral signatures in terms of variety, and they are independent from the time of the spectral signature measurement.
机译:本文介绍了使用高光谱数据辨别植物物种及其品种的新方法。该概念位于光谱预处理算法(SPPA)的组合,这些算法增强了物种及其品种之间的光谱辨别。 SPPA用作输入单个光谱签名并根据SPPA功能转换它。 SPPA的K-Step组合使用串联k预处理算法。最初每个光谱签名用作第一SPPA的输入。该SPPA的结果用作第二SPPA的输入,依此类推,直到达到所需的预处理签名。然后通过应用光谱匹配算法来区分这些签名。基于正确匹配的签名的数量来评估组合的性能。在这项工作中,已经建立了SPPA的K-Step组合,k从1到3中进行了调查深度,值归一化,n个顺序方形转换,平滑。上述SPPA有大量可能的组合,因此已经使用简单的遗传算法来寻找最佳组合。输入高光谱数据是由GER1500光谱辐射计测量的9种探险件和9个品种的鼠李和9个品种的光谱特征。对于所有样品,光谱签名在生长季节的两个略微不同的时间下测量。结果表明,存在多种组合,其可以成功地区分和标记谱签名,并且它们与光谱签名测量的时间无关。

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