Install the stable version of sgsR
from CRAN with:
Install the most recent development version of sgsR
from Github with:
install.packages("devtools")
devtools::install_github("https://github.com/tgoodbody/sgsR")
library(sgsR)
sgsR
in literatureOpen access publication: sgsR: a structurally guided sampling toolbox for LiDAR-based forest inventories
To cite sgsR
use citation()
from within R with:
print(citation("sgsR"), bibtex = TRUE)
#>
#> To cite package 'sgsR' in publications use:
#>
#> Goodbody, TRH., Coops, NC., Queinnec, M., White, JC., Tompalski, P.,
#> Hudak, AT., Auty, D., Valbuena, R., LeBoeuf, A., Sinclair, I.,
#> McCartney, G., Prieur, J-F., Woods, ME. (2023). sgsR: a structurally
#> guided sampling toolbox for LiDAR-based forest inventories. Forestry:
#> An International Journal of Forest Research.
#> 10.1093/forestry/cpac055.
#>
#> A BibTeX entry for LaTeX users is
#>
#> @Manual{,
#> title = {sgsR: a structurally guided sampling toolbox for LiDAR-based forest inventories.},
#> author = {Tristan R.H. Goodbody and Nicholas C. Coops and Martin Queinnec and Joanne C. White and Piotr Tompalski and Andrew T. Hudak and David Auty and Ruben Valbuena and Antoine LeBoeuf and Ian Sinclair and Grant McCartney and Jean-Francois Prieur and Murray E. Woods},
#> journal = {Forestry: An International Journal of Forest Research},
#> year = {2023},
#> doi = {10.1093/forestry/cpac055},
#> }
#>
#> Tristan RH Goodbody, Nicholas C Coops and Martin Queinnec (2023).
#> Structurally Guided Sampling. R package version 1.4.4.
#> https://cran.r-project.org/package=sgsR.
#>
#> A BibTeX entry for LaTeX users is
#>
#> @Manual{,
#> title = {Structurally Guided Sampling},
#> author = {Tristan RH Goodbody and Nicholas C Coops and Martin Queinnec},
#> year = {2023},
#> note = {R package version 1.4.4},
#> url = {https://cran.r-project.org/package=sgsR},
#> }
sgsR
provides a collection of stratification and sampling algorithms that use auxiliary information for allocating sample units over an areal sampling frame. ALS metrics, like those derived from the lidR
package are the intended inputs.
Other remotely sensed or auxiliary data can also be used (e.g. optical satellite imagery, climate data, drone-based products).
sgsR
is being actively developed, so you may encounter bugs. If that happens, please report your issue here by providing a reproducible example.
#--- Load mraster files ---#
r <- system.file("extdata", "mraster.tif", package = "sgsR")
#--- load the mraster using the terra package ---#
mraster <- terra::rast(r)
#--- apply quantiles algorithm to mraster ---#
sraster <- strat_quantiles(mraster = mraster$zq90, # use mraster as input for stratification
nStrata = 4) # produce 4 strata
#--- apply stratified sampling ---#
existing <- sample_strat(sraster = sraster, # use sraster as input for sampling
nSamp = 200, # request 200 samples
mindist = 100, # samples must be 100 m apart
plot = TRUE) # plot output
Check out the package documentation to see how you can use sgsR
functions for your work.
sgsR
was presented at the ForestSAT 2022 Conference in Berlin. Slides for the presentation can be found here.
We are thankful for continued collaboration with academic, private industry, and government institutions to help improve sgsR
. Special thanks to to:
Collaborator | Affiliation |
---|---|
Martin Queinnec | University of British Columbia |
Joanne C. White | Canadian Forest Service |
Piotr Tompalski | Canadian Forest Service |
Andrew T. Hudak | United States Forest Service |
Ruben Valbuena | Swedish University of Agricultural Sciences |
Antoine LeBoeuf | Ministère des Forêts, de la Faune et des Parcs |
Ian Sinclair | Ministry of Northern Development, Mines, Natural Resources and Forestry |
Grant McCartney | Forsite Consultants Ltd. |
Jean-Francois Prieur | Université de Sherbrooke |
Murray Woods | (Retired) Ministry of Northern Development, Mines, Natural Resources and Forestry |
Development of sgsR
was made possible thanks to the financial support of the Canadian Wood Fibre Centre’s Forest Innovation Program.