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WITHIN- AND BETWEEN-CLASS VARIABILITY OF SPECTRALLY SIMILAR TREE SPECIES

机译:在频谱相似树种的阶级变异性范围内

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In this paper, a comparison is made through evaluating the within-and between-class species variability for the original, the first derivative and second derivative spectra. For each, the experiment was conducted (i) over the entire electromagnetic spectrum (EMS), (ii) the visible (VIS) region, (iii) the near infrared (NIR) region, (iv) the short wave infrared (SWIR) region, (v) using band selection, for example, best 10, 20, 30 and 65 bands selected, through linear stepwise discriminant analysis (vi) using sequential selection of bands, for example, every 5th, 9th, 15th, 19th or 25th band selected and (vii) spectral degradation of the spectral bands by averaging the reflectance values for every 5th, 9th, 15th, 19th or 25th band. We concluded that for this data set, there are important bands from the original spectra, the first and second derivative spectra and from various regions of the EMS (VIS, NIR, SWIR) that is important for species separability. Furthermore, there did not seem to be any decrease in species separability, for this data set, by degrading the spectral bands through averaging the reflectance. This implies that hyperspectral (high spectral) measurements did not prove useful in species separability compared to lower spectral resolution data.
机译:在本文中,比较通过评估所述内和类间物种变异性为原始的,一阶导数和二阶导数光谱制成。对于每一个中,进行实验(ⅰ)在整个电磁波谱(EMS),(ii)所述可见(VIS)区域,(iii)所述的近红外(NIR)区域中,(iv)所述短波红外(SWIR)选择的区域,(v)的使用频带选择,例如,最好10,20,30和65的频带,通过线性逐步判别分析(VI),使用频带的顺序选择,例如,每第5,第9,第15,第19或第25波段选择及(vii)光谱由每5日,9日,15日,19日或25日带平均反射率值光谱带退化。我们的结论是,这个数据集,有从原来的频谱,所述第一和第二导数光谱并从EMS(VIS,NIR,SWIR),其是用于物种可分离重要的各个区域重要的频带。此外,似乎没有要在种类可分任何减少,对于这组数据,通过平均反射率降低谱带。这意味着,高光谱(高光谱)的测量没有证明相比降低光谱分辨率的数据种类可分有用。

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