# How to find an image within another image using python

I'm trying to use python to determine if one (small) image is within another (large) image.

Any suggestions before I take myself completely down the wrong path?

/edit: Ok, some ideas: I'm using PIL, and I'm converting each image to the 'P' mode so I can compare each pixel as an integer. I'm trying to implement something like a Boyer–Moore string search or the Knuth–Morris–Pratt algorithm, but in 2 dimensions.

Maybe this will help: instead of searching for `ABC in XXXABCXXX` (answer=4) we are searching for

``````ABC
DEF
GHI
``````

in

``````XXXXX
XABCX
XDEFX
XGHIX
XXXXX
``````

-
Are you looking for the small image exactly or could the image be rotated/skewed/scaled/etc.? –  Justin Peel Jun 15 '10 at 22:40
1 small image exactly. –  Zach Jun 16 '10 at 0:04
Zach, have you ever solved this? I'm in the same boat right now –  mikew Feb 16 at 7:52
@mikew I never solved this beyond the naive algorithm I posted below. I suspect you can solve this problem with OpenCV, but I never found any example code. I'd also still be interested to see a good solution in pure python. –  Zach Feb 16 at 14:37

Sikuli does it using OpenCV, see here how `match_by_template` works and then use the Python OpenCV bindings to do the same. Doing it without OpenCV should be hard, take a look at OpenCV documentation, search for template matching, etc...

-

EDIT: Ok, here is the naive way to do this:

``````import Image, numpy

def subimg(img1,img2):
img1=numpy.asarray(img1)
img2=numpy.asarray(img2)

#img1=numpy.array([[1,2,3],[4,5,6],[7,8,9]])
#img2=numpy.array([[0,0,0,0,0],[0,1,2,3,0],[0,4,5,6,0],[0,7,8,9,0],[0,0,0,0,0]])

img1y=img1.shape[0]
img1x=img1.shape[1]

img2y=img2.shape[0]
img2x=img2.shape[1]

stopy=img2y-img1y+1
stopx=img2x-img1x+1

for x1 in range(0,stopx):
for y1 in range(0,stopy):
x2=x1+img1x
y2=y1+img1y

pic=img2[y1:y2,x1:x2]
test=pic==img1

if test.all():
return x1, y1

return False

small=Image.open('small.tif')
big=Image.open('big.tif')

print subimg(small, big)
``````

It works just fine, but I want to SPEED IT UP. I think the key is in the array 'test' which we might be able to use to skip some positions in the image.

Edit 2: Make sure you use images in a loss-less format to test this.

-
Have a look at my answer to a similar question for a code example using OpenCV. The conversion from PIL to numpy is straight forward, e.g. just use `np.array(pilimage)`.