IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2023)

Forest Height Inversion by Convolutional Neural Networks Based on L-Band PolInSAR Data Without Prior Knowledge Dependency

  • Dandan Li,
  • Hailiang Lu,
  • Chao Li,
  • Linda Mohaisen,
  • Weipeng Jing

DOI
https://doi.org/10.1109/JSTARS.2023.3328403
Journal volume & issue
Vol. 16
pp. 10394 – 10405

Abstract

Read online

Forest height is a key forest parameter which is of great significance for monitoring forest resources, calculating forest biomass, and observing the global carbon cycle. Because the PolInSAR system could provide various object information including height, shape and direction sensitivity, and spatial distribution, it becomes a powerful means for measuring forest height. The proposed framework utilizes deep learning and builds upon traditional DEM differencing and coherence amplitude inversion algorithms. By using L band PolInSAR data, a new convolutional neural network (CNN) model is established in which the estimated results of DEM differencing and coherence amplitude inversion are used as labels. Furthermore, the PCGrad optimization strategy is used for updating the gradient automatically in the training stage. This model could not only build a relationship between complex coherence and forest height but also makes full use of the spatial context information by using the CNN layers. Experiments are carried out based on the simulated data and real data, named Lope forest site, which are collected by uninhabited aerial vehicle synthetic aperture radar in the NASA AfriSAR campaign. Compared to the classic forest height inversion algorithms, the proposed framework has achieved a higher level of accuracy and performance on RMSE (10.15 m) and $R^{2}$ (0.87). Overall, the proposed framework does not require LiDAR data as prior knowledge and can be performed on various forest scenes. Consequently, it will hopefully serve as a useful approach for improvements in forest height inversion based on PolInSAR data.

Keywords