*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)
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