The following publications are possibly variants of this publication:
- Evaluation of machine learning methods and multi-source remote sensing data combinations to construct forest above-ground biomass modelsXingguang Yan, Jing Li, Andrew R. Smith, Di Yang, Tianyue Ma, Yiting Su, Jiahao Shao. digearth, 16(2):4471-4491, December 2023. [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]
- Forest above ground biomass estimation from P-band tomography dataLan Li, Erxue Chen, Zengyuan Li, Lei Zhao, Xinzhi Gu. igarss 2016: 21-23 [doi]
- Forest Aboveground Biomass Estimation Using Multisource Remote Sensing Data and Deep Learning Algorithms: A Case Study over Hangzhou Area in ChinaXin Tian, Jiejie Li, Fanyi Zhang, Haibo Zhang, Mi Jiang. remotesensing, 16(6):1074, March 2024. [doi]