Abstract

BackgroundForest canopy height is a key forest structure parameter. Precisely estimating forest canopy height is vital to improve forest management and ecological modelling. Compared with discrete-return LiDAR (Light Detection and Ranging), small-footprint full-waveform airborne LiDAR (FWL) techniques have the capability to acquire precise forest structural information. This research mainly focused on the influence of voxel size on forest canopy height estimates.MethodsA range of voxel sizes (from 10.0 m to 40.0 m interval of 2 m) were tested to obtain estimation accuracies of forest canopy height with different voxel sizes. In this study, all the waveforms within a voxel size were aggregated into a voxel-based LiDAR waveform, and a range of waveform metrics were calculated using the voxel-based LiDAR waveforms. Then, we established estimation model of forest canopy height using the voxel-based waveform metrics through Random Forest (RF) regression method.Results and conclusionsThe results showed the voxel-based method could reliably estimate forest canopy height using FWL data. In addition, the voxel sizes had an important influence on the estimation accuracies (R2 ranged from 0.625 to 0.832) of forest canopy height. However, the R2 values did not monotonically increase or decrease with the increase of voxel size in this study. The best estimation accuracy produced when the voxel size was 18 m (R2 = 0.832, RMSE = 2.57 m, RMSE% = 20.6%). Compared with the lowest estimation accuracy, the R2 value had a significant improvement (33.1%) when using the optimal voxel size. Finally, through the optimal voxel size, we produced the forest canopy height distribution map for this study area using RF regression model. Our findings demonstrate that the optimal voxel size need to be determined for improving estimation accuracy of forest parameter using small-footprint FWL data.

Highlights

  • Forest canopy height is a key forest structure parameter

  • The results show that the voxel-based method could successfully produce new LiDAR waveforms utilizing full-waveform LiDAR data

  • There were some differences among LiDAR waveforms for the different voxel sizes (Fig. 3), which could cause the difference of prediction precision of vegetation structure parameter

Read more

Summary

Introduction

Forest canopy height is a key forest structure parameter. Estimating forest canopy height is vital to improve forest management and ecological modelling. Remote sensing data are increasingly used to estimate vegetation parameters (e.g., Chopping et al 2011; Eisfelder et al 2012; Barrachina et al 2015; Nie et al 2017; García et al 2018). The signal saturation problem of optical remote sensing data occurs in dense vegetation areas or high biomass level (Solberg et al 2017). Vegetation parameters can be estimated using optical remote sensing data, the estimation precisions usually decline in vegetated areas with high biomass or densely vegetated areas (Duncanson et al 2010)

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call