# Fill countries in python basemap

Hi I am trying to plot a map using pythons basemap with some countries filled in a certain colour.

Is there a quick and easy solution out there??

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Maybe useful: geophysique.be/2011/01/27/… –  unutbu Nov 15 '12 at 12:03
I beleive this helps: matplotlib.1069221.n5.nabble.com/… –  Fran Borcic Nov 15 '12 at 15:19
Thanks for those comments, they where most helpful. I also found a site with free country data, which was just what I was looking for: http://www.naturalearthdata.com/ –  red_tiger Nov 16 '12 at 9:27
@red_tiger - you could answer your own question with a small code snippet and output? –  pelson Jan 4 at 9:45
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## 2 Answers

As has already been said by @unutbu, Thomas' post here is exactly what you are after.

Should you want to do this with Cartopy, the corresponding code (in v0.7) can be adapted from http://scitools.org.uk/cartopy/docs/latest/tutorials/using_the_shapereader.html slightly:

import cartopy.crs as ccrs
import matplotlib.pyplot as plt
import cartopy.io.shapereader as shpreader
import itertools
import numpy as np

shapename = 'admin_0_countries'
countries_shp = shpreader.natural_earth(resolution='110m',
category='cultural', name=shapename)

# some nice "earthy" colors
earth_colors = np.array([(199, 233, 192),
(161, 217, 155),
(116, 196, 118),
(65, 171, 93),
(35, 139, 69),
]) / 255.
earth_colors = itertools.cycle(earth_colors)

ax = plt.axes(projection=ccrs.PlateCarree())
for country in shpreader.Reader(countries_shp).records():
print country.attributes['name_long'], earth_colors.next()
ax.add_geometries(country.geometry, ccrs.PlateCarree(),
facecolor=earth_colors.next(),
label=country.attributes['name_long'])

plt.show()

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Please note that you should post the essential parts of the answer here, on this site, or your post risks being deleted See the FAQ where it mentions answers that are 'barely more than a link'. You may still include the link if you wish, but only as a 'reference'. The answer should stand on its own without needing the link. –  bluefeet May 8 at 21:12
Thanks @bluefeet - I can see why that would be the case. I've updated the answer to give some new information (without duplicating the original link, which I did not own the copyright on). Cheers, –  pelson May 8 at 21:33
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Inspired by the answer from pelson, I post the solution I have. I will leave it up to you which works best, so I will not accept any answer at the moment.

#! /usr/bin/env python

import sys
import os
from pylab import *
from mpl_toolkits.basemap import Basemap
import matplotlib as mp

from shapelib import ShapeFile
import dbflib
from matplotlib.collections import LineCollection
from matplotlib import cm

def get_shapeData(shp,dbf):
for npoly in range(shp.info()[0]):
shpsegs = []
shpinfo = []

shp_object = shp.read_object(npoly)
verts = shp_object.vertices()
rings = len(verts)
for ring in range(rings):
if ring == 0:
shapedict = dbf.read_record(npoly)
name = shapedict["name_long"]
continent = shapedict["continent"]
lons, lats = zip(*verts[ring])
if max(lons) > 721. or min(lons) < -721. or max(lats) > 91. or min(lats) < -91:
raise ValueError,msg
x, y = m(lons, lats)
shpsegs.append(zip(x,y))
shapedict['RINGNUM'] = ring+1
shapedict['SHAPENUM'] = npoly+1
shpinfo.append(shapedict)

lines = LineCollection(shpsegs,antialiaseds=(1,))
lines.set_facecolors(cm.jet(np.random.rand(1)))
lines.set_edgecolors('k')
lines.set_linewidth(0.3)
ax.add_collection(lines)

if __name__=='__main__':

f=figure(figsize=(10,10))
ax = plt.subplot(111)
m = Basemap(projection='merc',llcrnrlat=30,urcrnrlat=72,\
llcrnrlon=-40,urcrnrlon=50,resolution='c')
m.drawcountries(linewidth=0.1,color='w')

sfile = 'ne_10m_admin_0_countries'

shp = ShapeFile(sfile)
dbf = dbflib.open(sfile)
get_shapeData(shp,dbf)

show()
sys.exit(0)

This is the result

For my application I coloured contries by name or continent, therefore these lines:

name = shapedict["name_long"]
continent = shapedict["continent"]

The data used I got from this website: http://www.naturalearthdata.com/

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Your Albania is sinked. Not that many will notice :D –  theta May 15 at 12:54
Yes, actually the same happens to Armenia. I had to to a work arround, by explicitly filling these two countries in afterwards. The inquiery with the people from naturalearthdata was not conclusive and I did not follow this up once I fixed it for me –  red_tiger May 15 at 13:44
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