Topographic correction of visible near‐infrared reflectance spectra for horizon‐scale soil organic carbon mapping

Author:

Duro Alyssa M.1,Hirmas Daniel R.2ORCID,Ajami Hoori1,Billings Sharon A.3,Zhang Xi4,Li Li5ORCID,Flores Alejandro6ORCID,Moreno Victoria7,Cao Xiaoyang8,Guilinger James9,Oleghe Ewan10,Giménez Daniel10,Gray Andrew1,Sullivan Pamela L.7

Affiliation:

1. Department Environmental Sciences University of California Riverside California USA

2. Department of Plant and Soil Science Texas Tech University Lubbock Texas USA

3. Department of Ecology and Evolutionary Biology and Kansas Biological Survey and Center for Ecological Research University of Kansas Lawrence Kansas USA

4. Red River Research Station and School of Plant, Environmental and Soil Sciences Louisiana State University Agricultural Center Bossier City Louisiana USA

5. Department of Civil and Environmental Engineering Penn State University State College Pennsylvania USA

6. Department of Geosciences Boise State University Boise Idaho USA

7. College of Earth, Ocean, and Atmospheric Sciences Oregon State University Corvallis Oregon USA

8. College of Tourism, Resources and Environment Zaozhuang University Zaozhuang China

9. Department of Applied Environmental Science California State University, Monterey Bay Seaside California USA

10. Department of Environmental Sciences Rutgers University New Brunswick New Jersey USA

Abstract

AbstractUnderstanding soil organic carbon (SOC) response to global change has been hindered by an inability to map SOC at horizon scales relevant to coupled hydrologic and biogeochemical processes. Standard SOC measurements rely on homogenized samples taken from distinct depth intervals. Such sampling prevents an examination of fine‐scale SOC distribution within a soil horizon. Visible near‐infrared hyperspectral imaging (HSI) has been applied to intact monoliths and split cores surfaces to overcome this limitation. However, the roughness of these surfaces can influence HSI spectra by scattering reflected light in different directions posing challenges to fine‐scale SOC mapping. Here, we examine the influence of prescribed surface orientation on reflected spectra, develop a method for correcting topographic effects, and calibrate a partial least squares regression (PLSR) model for SOC prediction. Two empirical models that account for surface slope, aspect, and wavelength and two theoretical models that account for the geometry of the spectrometer were compared using 681 homogenized soil samples from across the United States that were packed into sample wells and presented to the spectrometer at 91 orientations. The empirical approach outperformed the more complex geometric models in correcting spectra taken at non‐flat configurations. Topographically corrected spectra reduced bias and error in SOC predicted by PLSR, particularly at slope angles greater than 30°. Our approach clears the way for investigating the spatial distributions of multiple soil properties on rough intact soil samples.

Funder

National Institute of Food and Agriculture

Division of Earth Sciences

Publisher

Wiley

Subject

Soil Science

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