The following publications are possibly variants of this publication:
- Potential of ALOS2 and NDVI to Estimate Forest Above-Ground Biomass, and Comparison with Lidar-Derived EstimatesGaia Vaglio Laurin, Francesco Pirotti, Mattia Callegari, Qi Chen, Giovanni Cuozzo, Emanuele Lingua, Claudia Notarnicola, Dario Papale. remotesensing, 9(1):18, 2017. [doi]
- Estimation of forest above-ground biomass using multi-parameter remote sensing data over a cold and arid areaXin Tian 0005, Zhongbo Su, Erxue Chen, Zengyuan Li, Christiaan van der Tol, Jianping Guo, Qisheng He. aeog, 14(1):160-168, 2012. [doi]
- Reprint of: Estimation of forest above-ground biomass using multi-parameter remote sensing data over a cold and arid areaXin Tian 0005, Zhongbo Su, Erxue Chen, Zengyuan Li, Christiaan van der Tol, Jianping Guo, Qisheng He. aeog, 17:102-110, 2012. [doi]
- A Novel Method for Estimating Spatial Distribution of Forest Above-Ground Biomass Based on Multispectral Fusion Data and Ensemble Learning AlgorithmXinyu Li, Meng Zhang 0016, Jiangping Long, Hui Lin 0004. remotesensing, 13(19):3910, 2021. [doi]
- Estimating Stand Volume and Above-Ground Biomass of Urban Forests Using LiDARVincenzo Giannico, Raffaele Lafortezza, Ranjeet John, Giovanni Sanesi, Lucia Pesola, Jiquan Chen. remotesensing, 8(4):339, 2016. [doi]