geoops
does spatial operations on GeoJSON.
geoops
is inspired by the JS library turf (http://turfjs.org/). It’s tagline is Advanced geospatial analysis for browsers and node. Turf works only with GeoJSON, as does geoops
. I don’t know JS that well, but it’s easy enough to understand the language, so I’ve been porting Turf to C++ wrapped up in R. The C++ so we can have fast performance. We’ve also wrapped the Turf JS library itself in the package lawn (https://github.com/ropensci/lawn), but we should be able to get better performance out of C++.
geoops
has a ways to go to include all the methods that Turf has, but we’ll get there eventually.
All data is expected to be in WGS-84.
We use a library from Niels Lohmann (https://github.com/nlohmann/json) for working with JSON in C++.
See also:
- geojson: https://github.com/ropensci/geojson
Package API:
#> - geo_bearing
#> - geo_midpoint
#> - geo_bbox_polygon
#> - geo_pointgrid
#> - geo_area
#> - geo_get_coords
#> - version
#> - geo_nearest
#> - geo_along
#> - geo_distance
#> - geo_destination
#> - geo_trianglegrid
#> - geo_planepoint
#> - geo_line_distance
Installation
Stable version
install.packages("geoops")
Dev version
remotes::install_github("sckott/geoops")
See the vignette (link here) to get started.
comparison to rgeos
FIXME!!! remove rgeos
stuff as that pkg is gone
distance
pt1 <- '{"type":"Feature","properties":{"marker-color":"#f00"},"geometry":{"type":"Point","coordinates":[-75.343,39.984]}}'
pt2 <- '{"type":"Feature","properties":{"marker-color":"#0f0"},"geometry":{"type":"Point","coordinates":[-75.534,39.123]}}'
library(rgeos)
rgeospt1 <- rgeos::readWKT("POINT(0.5 0.5)")
rgeospt2 <- rgeos::readWKT("POINT(2 2)")
microbenchmark::microbenchmark(
rgeos = rgeos::gDistance(rgeospt1, rgeospt2),
geoops = geoops::geo_distance(pt1, pt2, units = "miles"),
times = 10000L
)
nearest
point1 <- '{"type":["Feature"],"properties":{"marker-color":["#0f0"]},"geometry":{"type":["Point"],"coordinates":[28.9658,41.0101]}}'
point2 <- '{"type":["FeatureCollection"],"features":[{"type":"Feature","properties":{},"geometry":{"type":"Point","coordinates":[28.9739,41.0111]}},{"type":"Feature","properties":{},"geometry":{"type":"Point","coordinates":[28.9485,41.0242]}},{"type":"Feature","properties":{},"geometry":{"type":"Point","coordinates":[28.9387,41.0133]}}]}'
points <- '{"type":"FeatureCollection","features":[{"type":"Feature","properties":{},"geometry":{"type":"Point","coordinates":[28.9739,41.0111]}},{"type":"Feature","properties":{},"geometry":{"type":"Point","coordinates":[28.9485,41.0242]}},{"type":"Feature","properties":{},"geometry":{"type":"Point","coordinates":[28.9387,41.0133]}}]}'
g1 <- readWKT("MULTILINESTRING((34 54, 60 34), (0 10, 50 10, 100 50))")
g2 <- readWKT("POINT(100 30)")
microbenchmark::microbenchmark(
rgeos = rgeos::gNearestPoints(g1, g2),
geoops = geoops::geo_nearest(point1, points),
times = 10000L
)
Example use case
expand
Get some GeoJSON data, a FeatureCollection of Polygons
file <- system.file("examples/zillow_or.geojson", package = "geoops")
x <- paste0(readLines(file), collapse = "")
Break each polygon into separate JSON string
Using geo_area
, calculate the area of the polygon
areas <- vapply(polys, geo_area, 1, USE.NAMES = FALSE)
Visualize area of the polygons as a histogram
hist(areas, main = "")
Visualize some of the polygons, all of them
library(leaflet)
leaflet() %>%
addProviderTiles(provider = "OpenStreetMap.Mapnik") %>%
addGeoJSON(geojson = x) %>%
setView(lng = -123, lat = 45, zoom = 7)
Just one of them
leaflet() %>%
addProviderTiles(provider = "OpenStreetMap.Mapnik") %>%
addGeoJSON(geojson = polys[1]) %>%
setView(lng = -122.7, lat = 45.48, zoom = 13)
Meta
- Please report any issues or bugs.
- License: MIT
- Get citation information for
geoops
in R doingcitation(package = 'geoops')
- Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.