# Template Matching

Goals

In this chapter, you will learn

Theory

Template Matching is a method for searching and finding the location of a template image in a larger image. OpenCV comes with a function cv2.matchTemplate() for this purpose. It simply slides the template image over the input image (as in 2D convolution) and compares the template and patch of input image under the template image. Several comparison methods are implemented in OpenCV. (You can check docs for more details). It returns a grayscale image, where each pixel denotes how much does the neighbourhood of that pixel match with template.

If input image is of size (WxH) and template image is of size (wxh), output image will have a size of (W-w+1, H-h+1). Once you got the result, you can use cv2.minMaxLoc() function to find where is the maximum/minimum value. Take it as the top-left corner of rectangle and take (w,h) as width and height of the rectangle. That rectangle is your region of template.

If you are using cv2.TM_SQDIFF as comparison method, minimum value gives the best match.

Template Matching in OpenCV

Here, as an example, we will search for Messi’s face in his photo. So I created a template as below:

We will try all the comparison methods so that we can see how their results look like:

import cv2
import numpy as np
from matplotlib import pyplot as plt

img2 = img.copy()
w, h = template.shape[::-1]

# All the 6 methods for comparison in a list
methods = ['cv2.TM_CCOEFF', 'cv2.TM_CCOEFF_NORMED', 'cv2.TM_CCORR',
'cv2.TM_CCORR_NORMED', 'cv2.TM_SQDIFF', 'cv2.TM_SQDIFF_NORMED']

for meth in methods:
img = img2.copy()
method = eval(meth)

# Apply template Matching
res = cv2.matchTemplate(img,template,method)
min_val, max_val, min_loc, max_loc = cv2.minMaxLoc(res)

# If the method is TM_SQDIFF or TM_SQDIFF_NORMED, take minimum
if method in [cv2.TM_SQDIFF, cv2.TM_SQDIFF_NORMED]:
top_left = min_loc
else:
top_left = max_loc
bottom_right = (top_left[0] + w, top_left[1] + h)

cv2.rectangle(img,top_left, bottom_right, 255, 2)

plt.subplot(121),plt.imshow(res,cmap = 'gray')
plt.title('Matching Result'), plt.xticks([]), plt.yticks([])
plt.subplot(122),plt.imshow(img,cmap = 'gray')
plt.title('Detected Point'), plt.xticks([]), plt.yticks([])
plt.suptitle(meth)

plt.show()


See the results below:

• cv2.TM_CCOEFF
• cv2.TM_CCOEFF_NORMED
• cv2.TM_CCORR
• cv2.TM_CCORR_NORMED
• cv2.TM_SQDIFF
• cv2.TM_SQDIFF_NORMED

You can see that the result using cv2.TM_CCORR is not good as we expected.

Template Matching with Multiple Objects

In the previous section, we searched image for Messi’s face, which occurs only once in the image. Suppose you are searching for an object which has multiple occurances, cv2.minMaxLoc() won’t give you all the locations. In that case, we will use thresholding. So in this example, we will use a screenshot of the famous game Mario and we will find the coins in it.

import cv2
import numpy as np
from matplotlib import pyplot as plt

img_gray = cv2.cvtColor(img_rgb, cv2.COLOR_BGR2GRAY)
w, h = template.shape[::-1]

res = cv2.matchTemplate(img_gray,template,cv2.TM_CCOEFF_NORMED)
threshold = 0.8
loc = np.where( res >= threshold)
for pt in zip(*loc[::-1]):
cv2.rectangle(img_rgb, pt, (pt[0] + w, pt[1] + h), (0,0,255), 2)

cv2.imwrite('res.png',img_rgb)


Result: