Spectral Mixture Modeling of an ASTER Bare Soil Synthetic Image Using a Representative Spectral Library to Map Soils in Central-Brazil

Author:

Novais Jean J.1ORCID,Poppiel Raul R.2ORCID,Lacerda Marilusa P. C.1,Oliveira Manuel P.1,Demattê José A. M.3ORCID

Affiliation:

1. Faculty of Agronomy and Veterinary Medicine, Darcy Ribeiro University Campus, University of Brasília, ICC Sul, Asa Norte 70910-960, Brazil

2. Geoscience Institute, Darcy Ribeiro University Campus, University of Brasília, ICC Sul, Asa Norte 70910-960, Brazil

3. Department of Soil Science, Luiz de Queiroz College of Agriculture, University of São Paulo, Av. Pádua Dias, 11, Piracicaba 13416-900, Brazil

Abstract

Pedological maps in suitable scales are scarce in most countries due to the high costs involved in soil surveying. Therefore, methods for surveying and mapping must be developed to overpass the cartographic material obtention. In this sense, this work aims at assessing a digital soil map (DSM) built by multispectral data extrapolation from a source area to a target area using the ASTER time series modeling technique. For that process, eight representative toposequences were established in two contiguous micro-watersheds, with a total of 42 soil profiles for analyses and classification. We found Ferralsols, Plinthosols, Regosols, and a few Cambisols, Arenosols, Gleisols, and Histosols, typical of tropical regions. In the laboratory, surface soil samples were submitted to spectral readings from 0.40 µm to 2.50 µm. The soil spectra were morphologically interpreted, identifying shapes and main features typical of tropical soils. Soil texture grouped the curves by cluster analysis, forming a spectral library (SL). In parallel, an ASTER time series (2001, 2004, and 2006) was processed, generating a bare soil synthetic soil image (SySI) covering 39.7% of the target area. Multiple Endmember Spectral Mixture Analysis modeled the SL on the SySI generating DSM with 73% of Kappa index, in which identified about 77% is covered by rhodic Ferralsols. Besides the overestimation, the DSM represented the study area’s pedodiversity. Given the discussion raised, we consider including subsoil data and other features using other sensors in operations modeled by machine learning algorithms to improve results.

Funder

Coordination for the Improvement of Higher EducationPersonnel

Federal District Research Support Foundation

São Paulo State Research Support Foundation

Publisher

MDPI AG

Subject

Engineering (miscellaneous),Horticulture,Food Science,Agronomy and Crop Science

Reference34 articles.

1. IUSS Working Group WRB, FAO, and IUSS Working Group WRB (2015). World Reference Base for Soil Resources 2014 International Soil Classification System, FAO. World Soil Resources Reports No. 106.

2. Sentinel-2 imagery usage on environmental monitoring of land use and occupation in a microwatershed in Central Brazil;Novais;Gaia Sci.,2021

3. Digital soil mapping: A brief history and some lessons;Minasny;Geoderma,2016

4. The use of multiple endmember spectral mixture analysis (MESMA) for the mapping of soil attributes using ASTER imagery;Roberts;Acta Sci. Agron.,2013

5. Modeling and mapping of soil salinity with reflectance spectroscopy and landsat data using two quantitative methods (PLSR and MARS);Nawar;Remote Sens.,2014

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