评估sar -光学传感器融合在巴西热带森林地上生物量估算中的应用

IF 1.7 3区 农林科学 Q2 FORESTRY
A. B. Debastiani, C. Sanquetta, A. Corte, N. Pinto, F. Rex
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引用次数: 30

摘要

本研究的目的是评估Sentinel-1/2仪器和机器学习算法的C波段SAR数据在高生物量热带生态系统中估计森林地上森林生物量(AGB)的潜力。这项研究是在位于巴西亚马逊地区的贾马里国家森林进行的。响应变量是根据机载激光调查估算的AGB(Mg/ha)。以下治疗被认为是模型预测因子:1)VV和VH极化时的Sentinel-1 Sigma 0;2) (1)加上Sentinel-1纹理度量;3) (2)加上Sentinel-2波段和导出的植被指数(LAI、RVI、SAVI、NDVI)。我们的建模设计估计了SAR与光学变量在解释AGB中的相对重要性。建模采用了十二种机器学习算法,包括神经网络和回归树。与仅具有SAR反向散射的模型相比,纹理和光学数据的添加提供了显著的改进(3%)。随机树算法获得了最佳的模型性能。我们的研究结果证明了免费获得的SAR数据和机器学习在绘制热带生态系统AGB地图方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating SAR-optical sensor fusion for aboveground biomass estimation in a Brazilian tropical forest
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.
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来源期刊
CiteScore
2.20
自引率
11.10%
发文量
11
审稿时长
12 weeks
期刊介绍: Annals of Forest Research is a semestrial open access journal, which publishes research articles, research notes and critical review papers, exclusively in English, on topics dealing with forestry and environmental sciences. The journal promotes high scientific level articles, by following international editorial conventions and by applying a peer-review selection process.
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