# Making a weighted USA map based on state-level data

I have a list of state-level data with numbers for each state, e.g.:

``````AL  10.5
AK  45.6
AZ  23.4
AR  15.0
...
``````

and I want to make it into a weighted map, with darkest where the number is highest and lightest here it is lowest. Is there any software, or a java or python library that can generate such an image?

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That is very simple in principle if you have the USA map and you know a point on it for each state. Do you have such map ? –  mmgp Feb 1 '13 at 0:00
I found this svg and this png, and I wouldn't mind finding points. –  Jakob Weisblat Feb 1 '13 at 0:06
do you want to display in it a web browser or desktop app? –  mantrid Feb 1 '13 at 0:13
Indiemapper might be an option. It is an online tool to make maps. Here is an explanation how to do it. –  user2018323 Feb 1 '13 at 0:13

If you want to build it yourself, all you need is a good map, a set of positions for each state in this map, and flood fill.

Using the map http://www.clker.com/cliparts/S/r/a/w/L/0/black-and-white-u-s-map-hi.png, here is what we get:

The code to build the map above is given by

``````import sys
from PIL import Image

def floodfill(img, seed, color):
work = [seed]
start_color = im[seed]
while work:
x, y = work.pop()
im[x, y] = color
for dx, dy in ((-1,0), (1,0), (0,-1), (0,1)):
nx, ny = x + dx, y + dy
if im[nx, ny] == start_color:
work.append((nx, ny))

USA_MAP = Image.open(sys.argv[1]).convert('1')
POINT_STATE = {'AL': (420, 260), 'AZ': (110, 240), 'AR': (350, 250)}

painted_map = USA_MAP.convert('L')
data = {'AL': 10.5, 'AZ': 23.4, 'AR': 15.0}
# Normalize data based on the minimum weight being 0+eps and maximum 30.
for k, v in data.items():
v = v/30.
color = int(round(255 * v))
floodfill(painted_map, POINT_STATE[k], 255 - color)

painted_map.save(sys.argv[2])
``````
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