High Spatial Resolution and High Temporal Frequency (30-m/15-day) Fractional Vegetation Cover Estimation over China Using Multiple Remote Sensing Datasets: Method Development and Validation

被引:0
作者
Xihan Mu
Tian Zhao
Gaiyan Ruan
Jinling Song
Jindi Wang
Guangjian Yan
Tim R. Mcvicar
Kai Yan
Zhan Gao
Yaokai Liu
Yuanyuan Wang
机构
[1] Beijing Normal University,State Key Laboratory of Remote Sensing Science, Faculty of Geographical Science
[2] Beijing Normal University,Beijing Engineering Research Center for Global Land Remote Sensing Products, Faculty of Geographical Science
[3] CSIRO Land and Water,Department of Earth and Environment
[4] Boston University,Aerospace Information Research Institute
[5] Jiangsu Institute of Urban Planning and Design,National Satellite Meteorological Center
[6] Chinese Academy of Sciences,undefined
[7] China Meteorological Administration,undefined
来源
Journal of Meteorological Research | 2021年 / 35卷
关键词
fractional vegetation cover (FVC); high spatial resolution and high temporal frequency; data fusion; normalized difference vegetation index (NDVI); pixel unmixing model; multiple remote sensing datasets;
D O I
暂无
中图分类号
学科分类号
摘要
High spatial resolution and high temporal frequency fractional vegetation cover (FVC) products have been increasingly in demand to monitor and research land surface processes. This paper develops an algorithm to estimate FVC at a 30-m/15-day resolution over China by taking advantage of the spatial and temporal information from different types of sensors: the 30-m resolution sensor on the Chinese environment satellite (HJ-1) and the 1-km Moderate Resolution Imaging Spectroradiometer (MODIS). The algorithm was implemented for each main vegetation class and each land cover type over China. First, the high spatial resolution and high temporal frequency normalized difference vegetation index (NDVI) was acquired by using the continuous correction (CC) data assimilation method. Then, FVC was generated with a nonlinear pixel unmixing model. Model coefficients were obtained by statistical analysis of the MODIS NDVI. The proposed method was evaluated based on in situ FVC measurements and a global FVC product (GEOV1 FVC). Direct validation using in situ measurements at 97 sampling plots per half month in 2010 showed that the annual mean errors (MEs) of forest, cropland, and grassland were −0.025, 0.133, and 0.160, respectively, indicating that the FVCs derived from the proposed algorithm were consistent with ground measurements [R2 = 0.809, root-mean-square deviation (RMSD) = 0.065]. An intercomparison between the proposed FVC and GEOV1 FVC demonstrated that the two products had good spatial-temporal consistency and similar magnitude (RMSD approximates 0.1). Overall, the approach provides a new operational way to estimate high spatial resolution and high temporal frequency FVC from multiple remote sensing datasets.
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页码:128 / 147
页数:19
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