首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Intra and inter-class spectral variability of tropical tree species at La Selva, Costa Rica: Implications for species identification using HYDICE imagery
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Intra and inter-class spectral variability of tropical tree species at La Selva, Costa Rica: Implications for species identification using HYDICE imagery

机译:哥斯达黎加拉塞尔瓦热带树种的种内和类间光谱变异性:利用HYDICE影像进行物种识别的意义

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Hyperspectral remote sensing provides great potential to monitor and study biodiversity of tropical forests through species identification and mapping. In this study, five species were selected to examine crown-level spectral variation within and between species using HYperspectral Digital Collection Experiment (HYDICE) data collected over La Selva, Costa Rica. Spectral angle was used to evaluate the spectral variation in reflectance, first derivative and wavelet-transformed spectral domains. Results indicated that intra-crown spectral variation does not always follow a normal distribution and can vary from crown to crown, therefore presenting challenges to statistically define the spectral variation within species using conventional classification approaches that assume normal distributions. Although derivative analysis has been used extensively in hyperspectral remote sensing of vegetation, our results suggest that it might not be optimal for species identification in tropical forestry using airborne hyperspectral data. The wavelet-transformed spectra, however, were useful for the identification of tree species. The wavelet coefficients at coarse spectral scales and the wavelet energy feature are more capable of reducing variation within crowns/species and capturing spectral differences between species. The implications of this examination of intra- and inter-specific variability at crown-level were: (1) the wavelet transform is a robust tool for the identification of tree species using hyperspectral data because it can provide a systematic view of the spectra at multiple scales; and (2) it may be impractical to identify every species using only hyperspectral data, given that spectral similarity may exist between species and that within-crown/species variability may be influenced by many factors. (c) 2006 Elsevier Inc. All rights reserved.
机译:通过物种识别和制图,高光谱遥感为监测和研究热带森林的生物多样性提供了巨大的潜力。在这项研究中,使用哥斯达黎加La Selva收集的超光谱数字收集实验(HYDICE)数据,选择了5个物种以检查物种内部和物种之间的冠级谱变化。光谱角用于评估反射率,一阶导数和小波变换的光谱域中的光谱变化。结果表明,冠内光谱变化并不总是遵循正态分布,而且冠与冠之间可能会发生变化,因此,使用假定正态分布的常规分类方法来统计学定义物种内的光谱变化提出了挑战。尽管导数分析已广泛用于植被的高光谱遥感,但我们的结果表明,使用机载高光谱数据进行热带森林物种识别可能不是最佳方法。然而,小波变换的光谱对于识别树种很有用。粗糙光谱尺度上的小波系数和小波能量特征更能够减少树冠/物种内部的变化并捕获物种之间的光谱差异。在树冠级别进行种内和种间变异性检查的含义是:(1)小波变换是使用高光谱数据识别树木种类的强大工具,因为它可以提供多个光谱的系统视图秤; (2)鉴于物种之间可能存在光谱相似性,并且冠内/物种内部的变异性可能受到许多因素的影响,仅使用高光谱数据来识别每个物种可能是不切实际的。 (c)2006 Elsevier Inc.保留所有权利。

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