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首页> 外文期刊>Remote Sensing >Investigating the Utility of Wavelet Transforms for Inverting a 3-D Radiative Transfer Model Using Hyperspectral Data to Retrieve Forest LAI
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Investigating the Utility of Wavelet Transforms for Inverting a 3-D Radiative Transfer Model Using Hyperspectral Data to Retrieve Forest LAI

机译:研究小波变换用于反演使用高光谱数据检索森林LAI的3-D辐射传输模型的实用程序

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摘要

The need for an efficient and standard technique for optimal spectral sampling of hyperspectral data during the inversion of canopy reflectance models has been the subject of many studies. The objective of this study was to investigate the utility of the discrete wavelet transform (DWT) for extracting useful features from hyperspectral data with which forest LAI can be estimated through inversion of a three dimensional radiative transfer model, the Discrete Anisotropy Radiative Transfer (DART) model. DART, coupled with the leaf optical properties model PROSPECT, was inverted with AVIRIS data using a look-up-table (LUT)-based inversion approach. We used AVIRIS data and in situ LAI measurements from two different hardwood forested sites in Wisconsin, USA. Prior to inversion, model-simulated and AVIRIS hyperspectral data were transformed into discrete wavelet coefficients using Haar wavelets. The LUT inversion was performed with three different datasets, the original reflectance bands, the full set of wavelet extracted features, and two wavelet subsets containing 99.99% and 99.0% of the cumulative energy of the original signal. The energy subset containing 99.99% of the cumulative signal energy provided better estimates of LAI (RMSE = 0.46, R2 = 0.77) than the original spectral bands (RMSE = 0.60, R2 = 0.47). The results indicate that the discrete wavelet transform can increase the accuracy of LAI estimates by improving the LUT-based inversion of DART (and, potentially, by implication, other terrestrial radiative transfer models) using hyperspectral data. The improvement in accuracy of LAI estimates is potentially due to different properties of wavelet analysis such as multi-scale representation, dimensionality reduction, and noise removal.
机译:在冠层反射率模型反演期间,需要一种高效,标准的技术来对高光谱数据进行最佳光谱采样,这已成为许多研究的主题。这项研究的目的是研究离散小波变换(DWT)从高光谱数据中提取有用特征的实用性,利用该特征可以通过三维辐射传输模型(离散各向异性辐射传输(DART))的反演来估算森林LAI。模型。使用基于查找表(LUT)的反演方法,将AVI数据与DART以及叶片光学特性模型PROSPECT进行反演。我们使用了来自美国威斯康星州两个不同硬木林场的AVIRIS数据和原位LAI测量。在反演之前,使用Haar小波将模型仿真的AVIRIS高光谱数据转换为离散的小波系数。使用三个不同的数据集(原始反射率带,完整的小波提取特征集以及两个包含原始信号累积能量的99.99%和99.0%的小波子集)执行LUT反转。包含99.99%累积信号能量的能量子集提供的LAI(RMSE = 0.46,R 2 = 0.77)比原始光谱带(RMSE = 0.60,R 2 = 0.47)。结果表明,离散小波变换可以通过使用高光谱数据改善基于LUT的DART的反演(以及可能暗示其他地面辐射传输模型)来提高LAI估计的准确性。 LAI估计准确性的提高可能是由于小波分析的不同属性,例如多尺度表示,降维和噪声去除。

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