Land (Apr 2021)

Estimating Forest Canopy Cover by Multiscale Remote Sensing in Northeast Jiangxi, China

  • Xiaolan Huang,
  • Weicheng Wu,
  • Tingting Shen,
  • Lifeng Xie,
  • Yaozu Qin,
  • Shanling Peng,
  • Xiaoting Zhou,
  • Xiao Fu,
  • Jie Li,
  • Zhenjiang Zhang,
  • Ming Zhang,
  • Yixuan Liu,
  • Jingheng Jiang,
  • Penghui Ou,
  • Wenchao Huangfu,
  • Yang Zhang

DOI
https://doi.org/10.3390/land10040433
Journal volume & issue
Vol. 10, no. 4
p. 433

Abstract

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This research was focused on estimation of tree canopy cover (CC) by multiscale remote sensing in south China. The key aim is to establish the relationship between CC and woody NDVI (NDVIW) or to build a CC-NDVIW model taking northeast Jiangxi as an example. Based on field CC measurements, this research used Google Earth as a complementary source to measure CC. In total, 63 sample plots of CC were created, among which 45 were applied for modeling and the remaining 18 were employed for verification. In order to ascertain the ratio R of NDVIW to the satellite observed NDVI, a 20-year time-series MODIS NDVI dataset was utilized for decomposition to obtain the NDVIW component, and then the ratio R was calculated with the equation R = (NDVIW/NDVI) *100%, respectively, for forest (CC > 60%), medium woodland (CC = 25–60%) and sparse woodland (CC 1–25%). Landsat TM and OLI images that had been orthorectified by the provider USGS were atmospherically corrected using the COST model and used to derive NDVIL. R was multiplied for the NDVIL image to extract the woody NDVI (NDVIWL) from Landsat data for each of these plots. The 45 plots of CC data were linearly fitted to the NDVIWL, and a model with CC = 103.843 NDVIW + 6.157 (R2 = 0.881) was obtained. This equation was applied to predict CC at the 18 verification plots and a good agreement was found (R2 = 0.897). This validated CC-NDVIW model was further applied to the woody NDVI of forest, medium woodland and sparse woodland derived from Landsat data for regional CC estimation. An independent group of 24 measured plots was utilized for validation of the results, and an accuracy of 83.0% was obtained. Thence, the developed model has high predictivity and is suitable for large-scale estimation of CC using high-resolution data.

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