Sentinel-1 Imagery Used for Estimation of Soil Organic Carbon by Dual-Polarization SAR Vegetation Indices

Author:

Santos Erli Pinto dos1ORCID,Moreira Michel Castro1,Fernandes-Filho Elpídio Inácio2ORCID,Demattê José Alexandre M.3ORCID,Dionizio Emily Ane1ORCID,Silva Demetrius David da1ORCID,Cruz Renata Ranielly Pedroza4,Moura-Bueno Jean Michel5,Santos Uemeson José dos6ORCID,Costa Marcos Heil1ORCID

Affiliation:

1. Department of Agricultural Engineering, Federal University of Viçosa, University Campus, Peter Henry Rolfs Avenue, Viçosa 36570-900, MG, Brazil

2. Department of Soil, Federal University of Viçosa, University Campus, Peter Henry Rolfs Avenue, Viçosa 36570-900, MG, Brazil

3. Department of Soil Science, “Luiz de Queiroz” College of Agriculture, University of São Paulo, Pádua Dias Avenue, Piracicaba 13418-900, SP, Brazil

4. Department of Agronomy, Federal University of Viçosa, University Campus, Peter Henry Rolfs Avenue, Viçosa 36570-900, MG, Brazil

5. Soil Science Department, Federal University of Santa Maria, Roraima Avenue, 1000, Santa Maria 97105-900, RS, Brazil

6. Federal Institute of Education, Science, and Technology of Pará, Campus Óbidos, Rodovia PA 437, km 02, Óbidos 68250-000, PA, Brazil

Abstract

Despite optical remote sensing (and the spectral vegetation indices) contributions to digital soil-mapping studies of soil organic carbon (SOC), few studies have used active radar remote sensing mission data like that from synthetic aperture radar (SAR) sensors to predict SOC. Bearing in mind the importance of SOC mapping for agricultural, ecological, and climate interests and also the recently developed methods for vegetation monitoring using Sentinel-1 SAR data, in this work, we aimed to take advantage of the high operationality of Sentinel-1 imaging to test the accuracy of SOC prediction at different soil depths using machine learning systems. Using linear, nonlinear, and tree regression-based methods, it was possible to predict the SOC content of soils from western Bahia, Brazil, a region with predominantly sandy soils, using as explanatory variables the SAR vegetation indices. The models fed with SAR sensor polarizations and vegetation indices produced more accurate results for the topsoil layers (0–5 cm and 5–10 cm in depth). In these superficial layers, the models achieved an RMSE in the order of 5.0 g kg−1 and an R2 ranging from 0.16 to 0.24, therefore explaining about 20% of SOC variability using only Sentinel-1 predictors.

Funder

Fundação de Amparo à Pesquisa do Estado de Minas Gerai

Coordenação de Aperfeiçoamento Pessoal de Nível Superior

CNPq

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference75 articles.

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