# Cropping Concave polygon from Image using Opencv python

How can I crop a concave polygon from an image. My Input image look like .

and the coordinates of closed polygon are [10,150],[150,100],[300,150],[350,100],[310,20],[35,10]. I want region bounded by concave polygon to be cropped using opencv. I searched for other similar questions but I did not able to find correct answer. That's why I am asking it ? Can you help me.

Any help would be highly appreciated.!!!

• can you post the original image? Jan 17, 2018 at 12:32

Steps

1. find region using the poly points
2. create mask using the poly points
3. do mask op to crop
4. add white bg if needed

The code:

``````# 2018.01.17 20:39:17 CST
# 2018.01.17 20:50:35 CST
import numpy as np
import cv2

pts = np.array([[10,150],[150,100],[300,150],[350,100],[310,20],[35,10]])

## (1) Crop the bounding rect
rect = cv2.boundingRect(pts)
x,y,w,h = rect
croped = img[y:y+h, x:x+w].copy()

pts = pts - pts.min(axis=0)

cv2.drawContours(mask, [pts], -1, (255, 255, 255), -1, cv2.LINE_AA)

## (3) do bit-op

## (4) add the white background
bg = np.ones_like(croped, np.uint8)*255
dst2 = bg+ dst

cv2.imwrite("croped.png", croped)
cv2.imwrite("dst.png", dst)
cv2.imwrite("dst2.png", dst2)
``````

Source image:

Result:

• How to change the black region in background to "white region" after cropping? Feb 22, 2018 at 13:31
• is it possible to save the image without background? I mean just save that cropped region only .. ? Jul 13, 2020 at 3:41
• how about transparent background instead of black or white ? @AbuOmair any luck ? Nov 16, 2021 at 4:42

You can do it in 3 steps:

1. Create a mask out of the image

2. Apply mask to original image

3. Optionally you can remove the crop the image to have a smaller one

rect = cv2.boundingRect(points) # returns (x,y,w,h) of the rect cropped = res[rect[1]: rect[1] + rect[3], rect[0]: rect[0] + rect[2]]

With this you should have at the end the image cropped

# UPDATE

For the sake of completeness here is the complete code:

``````import numpy as np
import cv2

height = img.shape[0]
width = img.shape[1]

points = np.array([[[10,150],[150,100],[300,150],[350,100],[310,20],[35,10]]])

rect = cv2.boundingRect(points) # returns (x,y,w,h) of the rect
cropped = res[rect[1]: rect[1] + rect[3], rect[0]: rect[0] + rect[2]]

cv2.imshow("cropped" , cropped )
cv2.imshow("same size" , res)
cv2.waitKey(0)
``````

For the colored background version use the code like this:

``````import numpy as np
import cv2

height = img.shape[0]
width = img.shape[1]

points = np.array([[[10,150],[150,100],[300,150],[350,100],[310,20],[35,10]]])

rect = cv2.boundingRect(points) # returns (x,y,w,h) of the rect
im2 = np.full((res.shape[0], res.shape[1], 3), (0, 255, 0), dtype=np.uint8 ) # you can also use other colors or simply load another image of the same size
finalIm = res + colorCrop
cropped = finalIm[rect[1]: rect[1] + rect[3], rect[0]: rect[0] + rect[2]]

cv2.imshow("cropped" , cropped )
cv2.imshow("same size" , res)
cv2.waitKey(0)
``````
• I tried with your code but the output that I am getting is the cropped convex shape not concave shape. My problem has been resolved with @Silencer answer. Thanks for your answer too. P.S. - Can't insert image in comment!! Jan 17, 2018 at 13:22
• @HimanshuTiwari I do not understand... this should work for any polygon convex or concave... and basically both answer do almost the same, I tested my code with a random image and I got the same result as Silencer... oh well, if you manage to solve it, then everything is good Jan 17, 2018 at 13:43
• Sorry I did mistake. But now I got the correct output. Jan 17, 2018 at 15:59
• @HimanshuTiwari It is ok :) it is always good to have 2 possible result to choose from :) Jan 17, 2018 at 17:18
• @HimanshuTiwari Even if there are two answers to choose from both deserve the merit of acceptance as well as thumbs UP. I found both useful and well readable so +1 for both of them.
– SKR
Oct 1, 2018 at 16:40

For the blured image background version use the code like this:

``````    img = cv2.imread(img_path)
box = <box points>

# -- background
blur_bg = cv2.blur(img, (h, w))
mask1 = np.zeros((h, w, 3), np.uint8)
mask2 = np.ones((h, w, 3), np.uint8) * 255