The following publications are possibly variants of this publication:
- Retrieving the Diurnal FPAR of a Maize Canopy from the Jointing Stage to the Tasseling Stage with Vegetation Indices under Different Water Stresses and Light ConditionsLiang Zhao, Zhigang Liu, Shan Xu, Xue He, Zhuoya Ni, Huarong Zhao, Sanxue Ren. sensors, 18(11):3965, 2018. [doi]
- Analyzing the characteristics of FPAR from maize canopies measured in Northwest ChinaDonghui Xie, Yan Wang, Peijuan Wang, Guangjian Yan, Jinling Song. igarss 2013: 2802-2805 [doi]
- Research on PAR and FPAR of crop canopies based on RGMDonghui Xie, Peijuan Wang, Rongyuan Liu, Qijiang Zhu. igarss 2010: 1493-1496 [doi]
- Monitoring the Vertical Distribution of Maize Canopy Chlorophyll Content Based on Multi-Angular Spectral DataBin Wu, Huichun Ye, Wenjiang Huang, Hongye Wang, Peilei Luo, Yu Ren, Weiping Kong. remotesensing, 13(5):987, 2021. [doi]
- Maize Canopy and Leaf Chlorophyll Content Assessment from Leaf Spectral Reflectance: Estimation and Uncertainty Analysis across Growth Stages and Vertical DistributionHongye Yang, Bo Ming, Chenwei Nie, Beibei Xue, Jiangfeng Xin, Xingli Lu, Jun Xue, Peng Hou, Ruizhi Xie, Keru Wang, Shaokun Li. remotesensing, 14(9):2115, 2022. [doi]
- Remote Estimation of Leaf and Canopy Water Content in Winter Wheat with Different Vertical Distribution of Water-Related PropertiesShishi Liu, Yi Peng, Wei Du, Yuan Le, Lu Li. remotesensing, 7(4):4626-4650, 2015. [doi]
- Remote Estimation of Nitrogen Vertical Distribution by Consideration of Maize Geometry CharacteristicsHuichun Ye, Wenjiang Huang, Shanyu Huang, Bin Wu, Yingying Dong, Bei Cui. remotesensing, 10(12):1995, 2018. [doi]
- Model updating for the classification of different varieties of maize seeds from different years by hyperspectral imaging coupled with a pre-labeling methodDongsheng Guo, Qibing Zhu, Min Huang, Ya Guo, Jianwei Qin. cea, 142:1-8, 2017. [doi]
- Estimation of Nitrogen Vertical Distribution by Bi-Directional Canopy Reflectance in Winter WheatWenjiang Huang, Qinying Yang, Ruiliang Pu, Shaoyuan Yang. sensors, 14(11):20347-20359, 2014. [doi]