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rmapshaper <a href="http://andyteucher.ca/rmapshaper/"><img src="man/figures/logo.png" align="right" height="139" alt="rmapshaper website" /></a>

An R package providing access to the awesome mapshaper tool by Matthew Bloch, which has both a Node.js command-line tool as well as an interactive web tool.

I started this package so that I could use mapshaper’s Visvalingam simplification method in R. There is, as far as I know, no other R package that performs topologically-aware multi-polygon simplification. (This means that shared boundaries between adjacent polygons are always kept intact, with no gaps or overlaps, even at high levels of simplification).

But mapshaper does much more than simplification, so I am working on wrapping most of the core functionality of mapshaper into R functions.

So far, rmapshaper provides the following functions:

If you run into any bugs or have any feature requests, please file an issue

Installation

rmapshaper is on CRAN. Install the current version with:

install.packages("rmapshaper")

You can install the development version from github with remotes:

## install.packages("remotes")
library(remotes)
install_github("ateucher/rmapshaper")

Usage

rmapshaper works with sf objects as well as geojson strings (character objects of class geo_json). It also works with Spatial classes from the sp package, though this will likely be retired in the future; users are encouraged to use the more modern sf package.

We will use the nc.gpkg file (North Carolina county boundaries) from the sf package and read it in as an sf object:

library(rmapshaper)
library(sf)
#> Linking to GEOS 3.11.0, GDAL 3.5.3, PROJ 9.1.0; sf_use_s2() is TRUE

file <- system.file("gpkg/nc.gpkg", package = "sf")
nc_sf <- read_sf(file)

Plot the original:

plot(nc_sf["FIPS"])

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Now simplify using default parameters, then plot the simplified North Carolina counties:

nc_simp <- ms_simplify(nc_sf)
plot(nc_simp["FIPS"])

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You can see that even at very high levels of simplification, the mapshaper simplification algorithm preserves the topology, including shared boundaries. The keep parameter specifies what proportion of vertices to keep:

nc_very_simp <- ms_simplify(nc_sf, keep = 0.001)
plot(nc_very_simp["FIPS"])

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Compare this to the output using sf::st_simplify, where overlaps and gaps are evident:


nc_stsimp <- st_simplify(nc_sf, preserveTopology = TRUE, dTolerance = 10000) # dTolerance specified in meters
plot(nc_stsimp["FIPS"])

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This time we’ll demonstrate the ms_innerlines function:

nc_sf_innerlines <- ms_innerlines(nc_sf)
plot(nc_sf_innerlines)

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All of the functions are quite fast with geojson character objects. They are slower with the sf and Spatial classes due to internal conversion to/from json. If you are going to do multiple operations on large sf objects, it’s recommended to first convert to json using geojsonsf::sf_geojson(), or geojsonio::geojson_json(). All of the functions have the input object as the first argument, and return the same class of object as the input. As such, they can be chained together. For a totally contrived example, using nc_sf as created above:

library(geojsonsf)
library(rmapshaper)
library(sf)

## First convert 'states' dataframe from geojsonsf pkg to json

nc_sf %>% 
  sf_geojson() |> 
  ms_erase(bbox = c(-80, 35, -79, 35.5)) |>  # Cut a big hole in the middle
  ms_dissolve() |>  # Dissolve county borders
  ms_simplify(keep_shapes = TRUE, explode = TRUE) |> # Simplify polygon
  geojson_sf() |> # Convert to sf object
  plot(col = "blue") # plot

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Using the system mapshaper

Sometimes if you are dealing with a very large spatial object in R, rmapshaper functions will take a very long time or not work at all. As of version 0.4.0, you can make use of the system mapshaper library if you have it installed. This will allow you to work with very large spatial objects.

First make sure you have mapshaper installed:

check_sys_mapshaper()

If you get an error, you will need to install mapshaper. First install node (https://nodejs.org/en) and then install mapshaper in a command prompt with:

$ npm install -g mapshaper

Then you can use the sys argument in any rmapshaper function:

nc_simp_internal <- ms_simplify(nc_sf)
nc_simp_sys <- ms_simplify(nc_sf, sys = TRUE, sys_mem=8) #sys_mem specifies the amount of memory to use in Gb.  It defaults to 8 if omitted. 

par(mfrow = c(1,2))
plot(st_geometry(nc_simp_internal), main = "internal")
plot(st_geometry(nc_simp_sys), main = "system")

Thanks

This package uses the V8 package to provide an environment in which to run mapshaper’s javascript code in R. It relies heavily on all of the great spatial packages that already exist (especially sf), and the geojsonio and the geojsonsf packages for converting between geojson, sf and Spatial object.

Thanks to timelyportfolio for helping me wrangle the javascript to the point where it works in V8. He also wrote the mapshaper htmlwidget, which provides access to the mapshaper web interface, right in your R session. We have plans to combine the two in the future.

Code of Conduct

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.

LICENSE

MIT