4.7 Article

High resolution topsoil mapping using hyperspectral image and field data in multivariate regression modeling procedures

Journal

GEODERMA
Volume 136, Issue 1-2, Pages 235-244

Publisher

ELSEVIER
DOI: 10.1016/j.geoderma.2006.03.050

Keywords

hyperspectral airborne data; topsoil mapping; partial least-square regression; multiple linear regression; soil texture; soil organic matter

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The spatial variability of within field topsoil texture and organic matter was studied using airborne hyperspectral imagery so as to develop improved fine-scale soil mapping procedures. Two important topsoil variables for precision farming applications, soil organic matter and soil texture, were found to be correlated with spectral properties of the airborne HyMap scanner. The percentage sand, clay, organic carbon and total nitrogen content could be predicted quantitatively and simultaneously by a multivariate calibration approach using either partial least-square regression (PLSR) or multiple linear regression (MLR). The different topsoil parameters are determined simultaneously from the spectral signature contained in the single hyperspectral image, since the various variables were represented by varying combinations of wavebands across the spectra. The methodology proposed provides a means of simultaneously estimating topsoil organic matter and texture in a rapid and non-destructive manner, whilst avoiding the spatial accuracy problems associated with spatial interpolation. The use of high spatial resolution and hyperspectral remotely sensed data in the manner proposed in this paper can also be used to monitor and better understand the influence of management and land use practices on soil organic matter composition and content. (c) 2006 Elsevier B.V. All rights reserved.

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