Inversion reflectance by apple tree canopy ground and unmanned aerial vehicle integrated remote sensing data

J Plant Res. 2021 Jul;134(4):729-736. doi: 10.1007/s10265-020-01249-1. Epub 2021 Feb 15.

Abstract

To obtain accurate spatially continuous reflectance from Unmanned Aerial Vehicle (UAV) remote sensing, UAV data needs to be integrated with the data on the ground. Here, we tested accuracy of two methods to inverse reflectance, Ground-UAV-Linear Spectral Mixture Model (G-UAV-LSMM) and Minimum Noise Fraction-Pixel Purity Index-Linear Spectral Mixture Model (MNF-PPI-LSMM). At wavelengths of 550, 660, 735 and 790 nm, which were obtained by UAV multispectral observations, we calculated the canopy abundance based on the two methods to acquire the inversion reflectance. The correlation of the inversion and measured reflectance values was stronger in G-UAV-LSMM than MNF-PPI-LSMM. We conclude that G-UAV-LSMM is the better model to obtain the canopy inversion reflectance.

Keywords: Apple tree canopy; Integrated; Inversion; Reflectance; Remote sensing.

MeSH terms

  • Linear Models
  • Malus*
  • Remote Sensing Technology*