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Spectral noise reduction and smoothing using local cubic least square regression from hyperion reflectance data

机译:使用来自高离子反射率数据的局部三次最小二乘回归来降低频谱噪声并进行平滑

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Hyperion data contain significant amount of spectral noise even after radiometric and spectral calibration, noise reduction and atmospheric corrections. The noise appears in the form of false absorption features which can potentially mislead spectral analysis. In this paper, we present a hybrid approach for removing spectral noise from Hyperion hyperspectral reflectance imagery. In this study, an MNF transformation and low-pass filtering are used in tandem to reduce random noise, and a local cubic least square regression based algorithm (LCLSR) is used in spectral domain to estimate a common spectral gain factor for each pixel's spectra in an image to get smooth reflectance spectra.
机译:即使经过辐射和光谱校准,降噪和大气校正,Hyperion数据仍包含大量光谱噪声。噪声以错误的吸收特征的形式出现,这可能会误导频谱分析。在本文中,我们提出了一种从Hyperion高光谱反射图像中去除光谱噪声的混合方法。在这项研究中,串联使用MNF变换和低通滤波来减少随机噪声,并且在光谱域中使用基于局部三次最小二乘回归的算法(LCLSR)来估算每个像素光谱的公共光谱增益因子。以获得平滑反射光谱的图像。

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