Annals of Forest Research (Dec 2019)

Evaluating SAR-optical sensor fusion for aboveground biomass estimation in a Brazilian tropical forest

  • Aline Bernarda Debastiani,
  • Carlos Roberto Sanquetta,
  • Ana Paula Dalla Corte,
  • Naiara Sardinha Pinto,
  • Franciel Eduardo Rex

DOI
https://doi.org/10.15287/afr.2018.1267
Journal volume & issue
Vol. 62, no. 2
pp. 109 – 122

Abstract

Read online

The aim of the present study is to evaluate the potential of C-band SAR data from the Sentinel-1/2 instruments and machine learning algorithms for the estimation of forest above ground forest biomass (AGB) in a high-biomass tropical ecosystem. This study was carried out in Jamari National Forest, located in the Brazilian Amazon. The response variable was AGB (Mg/ha) estimated from airborne laser surveys. The following treatments were considered as model predictors: 1) Sentinel-1 Sigma 0 at VV and VH polarizations; 2) (1) plus Sentinel-1 textural metrics; 3) (2) plus Sentinel-2 bands and derived vegetation indices (LAI, RVI, SAVI, NDVI).Our modeling design estimated the relative importance of SAR vs. optical variables in explaining AGB. The modeling was performed with twelve machine-learning algorithms including, neural network and regression tree. The addition of texture and optical data provided a noticeable improvement (3%) over models with SAR backscatter only. The best model performance was achieved with the Random Tree algorithm. Our results demonstrate the potential of freely-available SAR data and machine learning for mapping AGB in tropical ecosystems.

Keywords