# Adding convex hull to ggplot map

I am trying to create a ggplot that includes coordinates, density, and a convex hull polygon.

The data is a set of twenty latitudinal and longitudinal points.

This is my code:

``````# Data

# Convex hulls.

hulls <- ddply(economy, .(Latitude, Longitude), function(economy)
economy[chull(economy\$Latitude, economy\$Longitude), ])

fig <- ggplot(economy, aes(Latitude, Longitude, colour="black", fill="black")) +
geom_point() +
geom_density2d(alpha=.5) +
labs(x = "Latitude", y = "Longitude") +
geom_polygon(data=hulls, alpha=.2)

fig``````

The resulting plot looks like this:

I've tried a few things, and I can't get the convex hull to include only the points with max latitude and longitude. I can get the shape that I want outside of ggplot by using this code:

``````X <- economy
chull(X)
plot(X, cex = 0.5)
hpts <- chull(X)
hpts <- c(hpts, hpts[1])
lines(X[hpts, ])``````

The result that it gives me is this:

How can I get the same shape as in R base in ggplot?

Also, why when I change the color in my ggplot code, does it not change the plot?

• – Mikko Marttila Feb 8 '18 at 21:17
• @Mikko Marttila Thanks. I used the code from that question to come up with what I have so far. I'm not seeing why it's not using only the outside points from my data - any ideas? – caira Feb 12 '18 at 17:02
• In your `ddply` call you are splitting your data by unique values of `Latitude` and `Longitude` (i.e. distinct points) and finding the convex hull for each point, which is just the point itself. – Mikko Marttila Feb 12 '18 at 17:17
• Try just doing `hulls <- economy[chull(economy\$Latitude, economy\$Longitude), ]` – Mikko Marttila Feb 12 '18 at 17:18
• The answer in the linked Cross Validated post uses `ddply` in order to find a convex hull for multiple groups at the same time; while in your problem you just have one set of points to find a solution for, so you don't need `ddply` here. – Mikko Marttila Feb 12 '18 at 17:20

Your problem is with the `ddply`: currently your code splits the data by distinct values of `Latitude` and `Longitude` (i.e. each point you're plotting), finds the convex hull in each split (which is just the point itself) and binds the results together, effectively just giving you a row for each point in your data. That's why the polygon you draw touches every point.

Here's a solution that should work:

``````library(tidyverse)

# Find the convex hull of the points being plotted
hull <- mtcars %>%
slice(chull(mpg, wt))

# Define the scatterplot
p <- ggplot(mtcars, aes(mpg, wt)) + geom_point(shape = 21)

# Overlay the convex hull
p + geom_polygon(data = hull, alpha = 0.5)
``````

Now if you wanted to add a grouping to your plot, all you need to do is calculate the `chull` for each level of your grouping variable:

``````# Calculate the hulls for each group
hull_cyl <- mtcars %>%
group_by(cyl) %>%
slice(chull(mpg, wt))

# Update the plot with a fill group, and overlay the new hulls
p + aes(fill = factor(cyl)) + geom_polygon(data = hull_cyl, alpha = 0.5)
``````

Created on 2018-02-12 by the reprex package (v0.2.0).

By the way, there's also a nice example in one of the `ggplot2` vignettes, where they go through a step-by-step guide to creating custom stats and geoms, using the convex hull as an example: https://cran.r-project.org/web/packages/ggplot2/vignettes/extending-ggplot2.html.