Contains LiDAR data for 200 plots from two strata acquired by over-flying the Nundle State Forest (SF), NSW, Australia in 2011
data(training)A data frame with 200 observations on the following 10 variables.
OVa numeric vector containing LiDAR occupied volume
heightnumeric vector containing LiDAR heights
cca numeric vector containing LiDAR canopy cover
pstka numeric vector containing LiDAR stocking rate
vara numeric vector containing LiDAR height variances
xa numeric vector containing x-coordinates
ya numeric vector containing y-coordinates
Strataa factor with levels O Y
PIDnumeric vector containing unique plot IDs
plot_typea factor with levels B C T
The LiDAR variables were calculated as outlined in Turner et al. (2011).
Melville G, Stone C, Turner R (2015). Application of LiDAR data to maximize the efficiency of inventory plots in softwood plantations. New Zealand Journal of Forestry Science, 45:9,1-16. doi:10.1186/s40490-015-0038-7.
Stone C, Penman T, Turner R (2011). Determining an optimal model for processing lidar data at the plot level: results for a Pinus radiata plantation in New SouthWales, Australia. New Zealand Journal of Forestry Science, 41, 191-205.
Turner R, Kathuria A, Stone C (2011). Building a case for lidar-derived structure stratification for Australian softwood plantations. In Proceedings of the SilviLaser 2011 conference, Hobart, Tasmania, Australia.