I have a set of points that make a shape (closed polyline). Now I want to copy/crop all pixels from some image inside this shape, leaving the rest black/transparent. How do I do this?

For example, I have this:

enter image description here

and I want to get this:

enter image description here

  • 1
    I believe you will want to work with an irregular ROI (region of interest). You might start here: stackoverflow.com/questions/10632195/…
    – w-m
    Mar 11, 2013 at 15:24
  • Just in case: this question is not duplicate, since referred one describes C API and not Python (that question is still helpful, though).
    – ffriend
    Mar 11, 2013 at 21:23

2 Answers 2


*edit - updated to work with images that have an alpha channel.

This worked for me:

  • Make a mask with all black (all masked)
  • Fill a polygon with white in the shape of your ROI
  • combine the mask and your image to get the ROI with black everywhere else

You probably just want to keep the image and mask separate for functions that accept masks. However, I believe this does what you specifically asked for:

import cv2
import numpy as np

# original image
# -1 loads as-is so if it will be 3 or 4 channel as the original
image = cv2.imread('image.png', -1)
# mask defaulting to black for 3-channel and transparent for 4-channel
# (of course replace corners with yours)
mask = np.zeros(image.shape, dtype=np.uint8)
roi_corners = np.array([[(10,10), (300,300), (10,300)]], dtype=np.int32)
# fill the ROI so it doesn't get wiped out when the mask is applied
channel_count = image.shape[2]  # i.e. 3 or 4 depending on your image
ignore_mask_color = (255,)*channel_count
cv2.fillPoly(mask, roi_corners, ignore_mask_color)
# from Masterfool: use cv2.fillConvexPoly if you know it's convex

# apply the mask
masked_image = cv2.bitwise_and(image, mask)

# save the result
cv2.imwrite('image_masked.png', masked_image)
  • @kobejohn to create mask to make transparent background with this crop?
    – kju
    Dec 7, 2015 at 4:36
  • @kju do you mean you want transparent instead of black outside the ROI?
    – KobeJohn
    Dec 7, 2015 at 13:54
  • 3
    @kju This seems limited enough that I just updated the answer instead of making a new question. I guess many people doing this probably also want a transparent mask.
    – KobeJohn
    Dec 12, 2015 at 14:03
  • 2
    You should use cv2.fillConvexPoly if your shape is a convex polygon. The documentation states that this method is "much faster" than cv2.fillPoly.
    – Masterfool
    Mar 20, 2017 at 23:22
  • 1
    For my fillPoly didn't work but fillConvexPoly did. Thanks @Masterfool May 17, 2017 at 8:25

The following code would be helpful for cropping the images and get them in a white background.

import cv2
import numpy as np

# load the image
image_path = 'input image path'
image = cv2.imread(image_path)

# create a mask with white pixels
mask = np.ones(image.shape, dtype=np.uint8)

# points to be cropped
roi_corners = np.array([[(0, 300), (1880, 300), (1880, 400), (0, 400)]], dtype=np.int32)
# fill the ROI into the mask
cv2.fillPoly(mask, roi_corners, 0)

# The mask image
cv2.imwrite('image_masked.png', mask)

# applying th mask to original image
masked_image = cv2.bitwise_or(image, mask)

# The resultant image
cv2.imwrite('new_masked_image.png', masked_image)

Input Image: input image

Mask Image: mask image

Resultant output image: enter image description here

  • This is quite similar to the accepted answer. Can you explain how this adds value to this question?
    – rayryeng
    Mar 4, 2019 at 6:58
  • The following code would helpful for getting a white background mask image rather a black one. Mar 4, 2019 at 7:04
  • This doesn't add anything new. Simply invert the mask.
    – rayryeng
    Mar 4, 2019 at 7:15
  • From the first answer if you can just create a mask inverted and be able to provide the same result would be helpful. Mar 4, 2019 at 7:23
  • I appreciate this comment because it has representative pictures. May 17, 2020 at 11:17

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