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Continuous wavelets for the improved use of spectral libraries and hyperspectral data

机译:连续小波可改善频谱库和高光谱数据的使用

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Spectral libraries are commonly established as a means to archive representative signatures of natural materials. Such signatures can then be used to train feature extraction and classification algorithms applied to imagery, for comparison with unlabeled spectra. A number of spectral libraries are publicly available and widely used in the community. Disparities in viewing and illumination measurement configurations between libraries generally preclude the direct comparison of spectra for the same materials. Within libraries, measurements may be reported for varying sample properties, such as grain size in the case of powdered minerals or leaf or canopy structure in the case of vegetation. In such instances, use of the library and the selection of representative spectra to identify an unknown material may require a priori knowledge or an educated guess of the physical properties of the unknown material to conduct the comparison. This study demonstrates that continuous wavelet analysis can provide a new and useful representation of spectral libraries and minimize these disparities amongst libraries. In the context of spectral mixture analysis we suggest that the selection of representative endmember spectra from spectral libraries can be more readily defined in the wavelet domain than using reflectance data. In the context of sensing target compositional variability, for example changes in the chemistry of a given mineral, spectral differences due to distinct sample composition are more readily identified using wavelets. The examples provided in this paper are mainly for powdered mineral spectra because there are a number of widely known public spectral libraries of powdered minerals that have been in common use in the hyperspectral community but the principles apply to a range of natural materials including vegetation. (C) 2008 Elsevier Inc. All rights reserved.
机译:光谱库通常被建立为存档天然材料代表性签名的一种手段。然后可以使用此类签名来训练应用于图像的特征提取和分类算法,以便与未标记的光谱进行比较。许多光谱库是公开可用的,并在社区中广泛使用。库之间在查看和照明测量配置方面的差异通常会排除直接比较相同材料光谱的能力。在库中,可能会报告各种样品特性的测量结果,例如矿物质为粉末时的颗粒大小,植被为叶子时的叶或冠层结构。在这种情况下,使用库和选择代表性光谱来识别未知物质可能需要先验知识或对未知物质的物理性质进行有根据的猜测才能进行比较。这项研究表明,连续小波分析可以提供谱库的一种新的有用的表示形式,并使这些库之间的差异最小化。在光谱混合分析的背景下,我们建议从小波域中比使用反射率数据更容易定义从光谱库中选择代表性末端成员光谱。在检测目标成分的变异性(例如给定矿物的化学变化)的情况下,使用小波可以更容易地识别出因样品成分不同而引起的光谱差异。本文提供的示例主要针对粉末矿物光谱,因为有许多广为人知的粉末矿物公共光谱库已在高光谱社区中普遍使用,但原理适用于包括植被在内的多种天然物质。 (C)2008 Elsevier Inc.保留所有权利。

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