I am working with some pathology research. I need to mask some part of the image.`

cv::Mat img = imread("orginal.jpg",1);
cv::Mat mask = imread("mask.png",0);
cv::Mat clean(img.size(), img.type());
cv::bitwise_and(img, img, clean, mask);
cv::imwrite("clean_c.png", clean);`



Its working fine with white mask, but i get different output when its in python, it's have black mask

img1 = cv2.imread('orginal.jpg')
mask = cv2.imread('mask.jpg',0)
clean = cv2.bitwise_and(img1,img1,mask = mask)
  • This works for me. Is it because you spelled the image name orginal in your code instead of original? What do you mean by "it has a black mask"? When I run it, wherever the mask is white the original image shows up, otherwise it is black. What is the output you get in C++ that you want to recreate? – alkasm May 19 '17 at 5:50
  • in my program spells are correct. i wants gray part and objects other than cells of the image original.jpg to exact white.but i got black in python and white in c++ – Anas Mubarak May 19 '17 at 6:44
  • I have no idea why the C++ version is showing you white, as it should show black according to OpenCV docs. – alkasm May 19 '17 at 7:24
  • Either way, you can use clean[clean==0] = 255 to set the pixels with value 0 to 255. – alkasm May 19 '17 at 7:34
  • i got exact white with following code. 'code' clean = cv2.bitwise_and(img,img,mask = mask) clean = cv2.bitwise_not(clean) clean = cv2.bitwise_and(clean,clean,mask = mask) clean = cv2.bitwise_not(clean) – Anas Mubarak May 19 '17 at 8:29

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