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I have noticed that, from Google Maps page, you can get an "embed" link to put inside an iframe and load the map in a browser. (no news here)

The image size can be adjusted to be very large, so I am interested in getting som big images as single .PNGs.

More specifically, I would like to define a rectangular area from a bounding box (upper-right and lower-left coordinates), and get the corresponding image, with an appropriate zoom factor.

But my question is: How can I use Python to get the "pixel content" of this map as an image object?

(My rationale is: if the browser can get and render such image content, then Python should be capable of doing it, too).

EDIT: this is the content of the HTML file that shows my sample map:


EDIT: I did as suggested by Ned Batchelder, and read the content of an urllib.urlopen() call using the src address taken from the iframe above. The result was a lot of javascript code, which I think has to do with the Google Maps JavaScript API. So, the question lingers: how could I do some useful stuff from all this stuff in Python in order to get the map image?

EDIT: this link appears to contain some pretty relevant info on how Google Maps tiles their maps:


share|improve this question
up vote 8 down vote accepted

I thank for all the answers. I ended up solving the problem another way, using Google Maps Static API and some formulas to convert from Coordinate space to Pixel space, so that I can get precise images which "stich" nicely together.

For anyone interested, here is the code. If it helps someone, please comment!


import Image, urllib, StringIO
from math import log, exp, tan, atan, pi, ceil

EARTH_RADIUS = 6378137

def latlontopixels(lat, lon, zoom):
    mx = (lon * ORIGIN_SHIFT) / 180.0
    my = log(tan((90 + lat) * pi/360.0))/(pi/180.0)
    my = (my * ORIGIN_SHIFT) /180.0
    res = INITIAL_RESOLUTION / (2**zoom)
    px = (mx + ORIGIN_SHIFT) / res
    py = (my + ORIGIN_SHIFT) / res
    return px, py

def pixelstolatlon(px, py, zoom):
    res = INITIAL_RESOLUTION / (2**zoom)
    mx = px * res - ORIGIN_SHIFT
    my = py * res - ORIGIN_SHIFT
    lat = (my / ORIGIN_SHIFT) * 180.0
    lat = 180 / pi * (2*atan(exp(lat*pi/180.0)) - pi/2.0)
    lon = (mx / ORIGIN_SHIFT) * 180.0
    return lat, lon


# a neighbourhood in Lajeado, Brazil:

upperleft =  '-29.44,-52.0'  
lowerright = '-29.45,-51.98'

zoom = 18   # be careful not to get too many images!


ullat, ullon = map(float, upperleft.split(','))
lrlat, lrlon = map(float, lowerright.split(','))

# Set some important parameters
scale = 1
maxsize = 640

# convert all these coordinates to pixels
ulx, uly = latlontopixels(ullat, ullon, zoom)
lrx, lry = latlontopixels(lrlat, lrlon, zoom)

# calculate total pixel dimensions of final image
dx, dy = lrx - ulx, uly - lry

# calculate rows and columns
cols, rows = int(ceil(dx/maxsize)), int(ceil(dy/maxsize))

# calculate pixel dimensions of each small image
bottom = 120
largura = int(ceil(dx/cols))
altura = int(ceil(dy/rows))
alturaplus = altura + bottom

final ="RGB", (int(dx), int(dy)))
for x in range(cols):
    for y in range(rows):
        dxn = largura * (0.5 + x)
        dyn = altura * (0.5 + y)
        latn, lonn = pixelstolatlon(ulx + dxn, uly - dyn - bottom/2, zoom)
        position = ','.join((str(latn), str(lonn)))
        print x, y, position
        urlparams = urllib.urlencode({'center': position,
                                      'zoom': str(zoom),
                                      'size': '%dx%d' % (largura, alturaplus),
                                      'maptype': 'satellite',
                                      'sensor': 'false',
                                      'scale': scale})
        url = '' + urlparams
        final.paste(im, (int(x*largura), int(y*altura)))
share|improve this answer
Very nice! I got it to work but needed to make a few small changes as here: Note that this is Python 2 but it shouldn't be too hard to get it to work in Python 3. Also be aware that this is technically breaking the terms of use for the static maps API as detailed here: – Ben Elgar Aug 5 '15 at 20:07

Rather than trying to use the embed link, you should go directly to the Google API to get images as static graphics. Here's the link to the Google Maps static image API - it looks like you can just pass in the long/lat parameters in the URL just as you do for the normal embeddable one. For example:,-51.229248&size=600x600&zoom=14&sensor=false

gives you an 600x600 street-level overview centered on the co-ordinates you give above, which seems to be Porto Alegre in Brazil. Now you can use urlopen and PIL as Ned suggests:

from cStringIO import StringIO
import Image
import urllib

url = ",-51.229248&size=800x800&zoom=14&sensor=false"
buffer = StringIO(urllib.urlopen(url).read())
image =
share|improve this answer
That is my alternative for now, but I still want to try to make it "Plan B", since image stitching would be necessary to generate those megapixel-sized images I am aiming for. Getting coordinates for image corners is not necessarily easy or obvious, and since the embedded maps stitch together automagically, perhaps to study the javascript api could give some insight. Thanks for your tips and for your nice code snippet! – heltonbiker Sep 20 '11 at 22:28

urllib.urlopen will open a URL, the result will have a .read() method you can use to get the image bytes. cStringIO has a file-like object based on a string in memory. PIL has an function that opens a file-like thing to give you an image object. Image objects can be asked about their pixel values.

share|improve this answer
Using urllib as you said gives me javascript code (I think), not an image object. It makes sense, since the embedded map allows navigation (it is not generated using Google Maps Static API, which itself has some serious limits on image size). – heltonbiker Sep 20 '11 at 19:41
@heltonbiker: sorry, I don't know how to help with the more complex problem. The original description sounded more straightforward. – Ned Batchelder Sep 20 '11 at 19:44
I am very thankful for your insights and interest. Actually, I use your suggestion with Google Maps Static API. The problem asked, although, perhaps is more easily solved using some javascript directly. If I find a good answer, I'll post it here. Thanks again! – heltonbiker Sep 20 '11 at 20:23

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