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So with the help of a stack-overflow member, I have the following code:

data = "needle's (which is a png image) base64 code goes here"
decoded = data.decode('base64')
f = cStringIO.StringIO(decoded)
image =
needle = image.load()

while True:
    screenshot = ImageGrab.grab()
    haystack = screenshot.load()
    if detectImage(haystack, needle):

I've written the following code to check if the needle is in the haystack:

def detectImage(haystack, needle):
    counter = 0
    for hayrow in haystack:
        for haypix in hayrow:
            for needlerow in needle:
                for needlepix in needlerow:
                    if haypix == needlepix:
                        counter += 1

    if counter == 980: #the needle has 980 pixels
        return True
        return False

The issue is that I get this error for line 3: 'PixelAccess' object is not iterable

It was suggested to me that it would be easier to copy both needle and haystack into a numpy/scipy array. And then I can just use a function that checks to see if the 2D array needle is inside the 2D array haystack.

I need help with:

1) converting those arrays to numpy arrays.

2) a function that checks to see if the 2D array needle is inside the 2D array haystack. My function doesn't work.

These are the images:
haystack haystack

share|improve this question
Perhaps this line: for x1 in haystack[0]: should say for x1 in y1:. and for x2 in needle[0]: should be for x2 in y2:? Otherwise you're ignoring the y variables (but maybe that's intentional). – askewchan Mar 29 '13 at 20:42
Oh opps. You're right. – user1251385 Mar 29 '13 at 20:45
Remember that for ___ in 2dobject will give you rows. A better naming convention might be for hayrow in haystack ... for haypix in hayrow – askewchan Mar 29 '13 at 20:47
What does the pix in haypix stand for? – user1251385 Mar 29 '13 at 20:47
Alright, I've changed it. Thanks for that. – user1251385 Mar 29 '13 at 20:49
up vote 1 down vote accepted

You can use matchTemplate in opencv to detect the position:

import cv2
import numpy as np
import pylab as pl

needle = cv2.imread("needle.png")
haystack = cv2.imread("haystack.jpg")

diff = cv2.matchTemplate(haystack, needle, cv2.TM_CCORR_NORMED)
x, y = np.unravel_index(np.argmax(diff), diff.shape)

pl.figure(figsize=(12, 8))
im = pl.imshow(haystack[:,:, ::-1])
ax = pl.gca()
ax.add_artist(pl.Rectangle((y, x), needle.shape[1], needle.shape[0],  transform=ax.transData, alpha=0.6))

here is the output:

enter image description here

share|improve this answer
Currently downloading OpenCV. In the meantime, how would I know if it has found a match or not? By looking at the diff value, right? There is probably some threshold, correct? – user1251385 Mar 29 '13 at 22:45
the TM_CCOEFF_NORMED value of perfect match will be 1. You can use some threshold such as 0.9. – HYRY Mar 29 '13 at 22:51
Getting this error: NameError: name 'Rectangle' is not defined :( – user1251385 Mar 29 '13 at 23:02
change it to pl.Rectangle. – HYRY Mar 29 '13 at 23:04
cv2.TM_CCORR_NORMED is always 3 for some reason. Even if I change images. – user1251385 Mar 29 '13 at 23:14

To convert the image into a numpy array, you should be able to simply do this:

import numpy as np
from PIL import Image

needle ='needle.png')
haystack ='haystack.jpg')

needle = np.asarray(needle)
haystack = np.asarray(haystack)

To get you started with finding the needle, note that this will give you a list of all the places where the corner matches:

haystack = np.array([[1,2,3],[3,2,1],[2,1,3]])
needle = np.array([[2,1],[1,3]])

np.where(haystack == needle[0,0])
#(array([0, 1, 2]),   row-values
# array([1, 1, 0]))   col-values

Then, you can look at all the corner matches, and see if the subhaystack there matches:

h,w = needle.shape
rows, cols = np.where(haystack == needle[0,0])
for row, col in zip(rows, cols):
    if np.all(haystack[row:row+h, col:col+w] == needle):
        print "found it at row = %i, col = %i"%(row,col)
    print "no needle in haystack"

Below is a more robust version that finds the best match, and if it matches better than some percentage, considers the needle found. Returns the corner coordinate if found, None if not.

def find_needle(needle, haystack, tolerance=.80):
    """ input:  PIL.Image objects
        output: coordinat of found needle, else None """

    # convert to grayscale ("L"uminosity) for simplicity.
    needle = np.asarray(needle.convert('L'))   
    haystack = np.asarray(haystack.convert('L'))

    h,w = needle.shape
    H,W = haystack.shape
    L = haystack.max()

    best = (None, None, 1)
    rows, cols = np.where((haystack - needle[0,0])/L < tolerance)
    for row, col in zip(rows, cols):
        if row+h > H or col+w > W: continue # out of range
        diff = np.mean(haystack[row:row+h, col:col+w] - needle)/L
        if diff < best[-1]:
            best = (diff, row, col)

    return best if best[-1] < tolerance else None
share|improve this answer
Needle: Haystack: Yes, the needle is entirely in the haystack. – user1251385 Mar 29 '13 at 20:52
This still doesn't find the needle image in your haystack image, but I believe that's because one is a jpg and perhaps the lossiness of the jpg distorts it a bit. – askewchan Mar 29 '13 at 21:45
Oh wow. I was just about to give up. Thanks! Will test and provide results. – user1251385 Mar 29 '13 at 22:13
@askewchan Tried the convolution way, doesn't work: white areas of the haystack image (so [255, 255, 255]) give the largest values of the convolution. – Jaime Mar 29 '13 at 23:22
@Jaime: In general the convolution method works well, at least in my experience, but you need to normalize. Convolution, btw, is one of the ways that OpenCV's matchTemplate works.. all of which are just simple equations that are a few lines in numpy: – tom10 Mar 30 '13 at 1:50

I finally managed to make a numpy-only implementation of a cross correlation search work... The cross-correlation is calculated using the cross-correlation theorem and FFTs.

from __future__ import division
import numpy as np
from PIL import Image
import matplotlib.pyplot as plt

def cross_corr(a, b):
    a_rows, a_cols = a.shape[:2]
    b_rows, b_cols = b.shape[:2]
    rows, cols = max(a_rows, b_rows), max(a_cols, b_cols)
    a_f = np.fft.fft2(a, s=(rows, cols), axes=(0, 1))
    b_f = np.fft.fft2(b, s=(rows, cols), axes=(0, 1))
    corr_ab = np.fft.fft2(a_f.conj()*b_f, axes=(0,1))
    return np.rint(corr_ab / rows / cols)

def find_needle(haystack, needle, n=10):
    # convert to float and subtract 128 for better matching
    haystack = haystack.astype(np.float) - 128
    needle = needle.astype(np.float) - 128
    target = np.sum(np.sum(needle*needle, axis=0), axis=0)
    corr_hn = cross_corr(haystack, needle)
    delta = np.sum(np.abs(corr_hn - target), axis=-1)
    return np.unravel_index(np.argsort(delta, axis=None)[:n],

haystack = np.array('haystack.jpg'))
needle = np.array('needle.png'))[..., :3]
plt.imshow(haystack, interpolation='nearest')
dy, dx = needle.shape[:2]
candidates = find_needle(haystack, needle, 1)
for y, x in zip(*candidates):
    plt.plot([x, x+dx, x+dx, x, x], [y, y, y+dy,y+dy, y], 'g-', lw=2)

So the highest scoring point is the real needle:

enter image description here

>>> print candidates
(array([553], dtype=int64), array([821], dtype=int64))
share|improve this answer
+1: Thanks for posting this! It's great to have numpy version of subimage matching posted on SO. I'd be interested to hear about why it now works, especially regarding white pixels vs matched pixels, etc. – tom10 Mar 30 '13 at 15:41
@tom10 A lot of it was getting my cross-correlation theorem applied properly, and dealing with int overflows when computing the target value with the np.sum(needle**2). But for it to actually work, the big trick was to not cross correlate the images, but the images - 128. There are still a large number of images that will give the same result for the cross correlation, but apparently not so many. Without that trick, the real needle is something like the 100th best match... Frankly, I don't think the algorithm, as described above, is very robust. – Jaime Mar 30 '13 at 15:55
@tom10 It does work perfectly with binary images, if you search in 2*image - 1. – Jaime Mar 30 '13 at 15:56
@Jamie: Thanks! – tom10 Mar 31 '13 at 5:36

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