Study on the spectral reconstruction of typical surface types based on spectral library and principal component analysis
Weizhen Hou, Yilan Mao, Chi Xu, Zhengqiang Li, Donghui Li, Yan Ma, Hua, Xu

TL;DR
This paper proposes a spectral reconstruction method using spectral libraries and PCA, achieving high accuracy with fewer bands for typical surface types in remote sensing.
Contribution
It introduces a new spectral reconstruction model based on selected bands and PCA, improving efficiency and accuracy over traditional full-spectrum methods.
Findings
Reconstructed errors are smaller than 2% using PCA with 6 principal components.
Selected 4 bands can reconstruct surface reflectance with errors below 1.6%.
Correlation coefficients exceed 0.99 for all datasets, indicating high reconstruction accuracy.
Abstract
To meet the demanding of spectral reconstruction in the visible and near-infrared wavelength, the spectral reconstruction method for typical surface types is discussed based on the USGS /ASTER spectral library and principal component analysis (PCA). A new spectral reconstructed model is proposed by the information of several typical bands instead of all of the wavelength bands, and a linear combination spectral reconstruction model is also discussed. By selecting 4 typical spectral datasets including green vegetation, bare soil, rangeland and concrete in the spectral range of 400-900 nm, the PCA results show that 6 principal components could characterized the spectral dataset, and the relative reconstructed errors are smaller than 2%. If only 6-7 selected typical bands are employed to spectral reconstruction for all the surface reflectance in 400-900 nm, except that the reconstructed…
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