19

I want to detect a logo inside an image in order to remove it. I have an idea which is to look for objects which have the big number of pixels then remove. Another idea is to loop through all the white pixels (I have inverted my image) and look for pixels which forms a large region and then remove this region. Is there any algorithm better that this one. Also which methods in OpenCV will help me to detect object of large pixels number.

2 Answers 2

44

I have a method to do this. I don't know whether this method applicable to all, but it works good here.

Below is code ( in Python ):

First convert image to grayscale, resize image, apply threshold, and make a mask image of same size and type of that of resized grayscale image. (Mask image is just a black image)

import cv2
import numpy as np

img = cv2.imread('bus.png')
img = cv2.resize(img,(400,500))
gray = cv2.cvtColor(img,cv2.COLOR_BGR2GRAY)
ret,gray = cv2.threshold(gray,127,255,0)
gray2 = gray.copy()
mask = np.zeros(gray.shape,np.uint8)

Now find contours in the threshold image. Filter the contour for area between 500 to 5000. It will be most probably a large white blob, obviously not letters. (Remember, this area is particular for this image. I dont know about your other images. You will have to find it yourself). Now draw this contour on the mask image filled with white color.

contours, hier = cv2.findContours(gray,cv2.RETR_LIST,cv2.CHAIN_APPROX_SIMPLE)
for cnt in contours:
    if 200<cv2.contourArea(cnt)<5000:
        cv2.drawContours(img,[cnt],0,(0,255,0),2)
        cv2.drawContours(mask,[cnt],0,255,-1)

Below is the detected contour image:

detected contour drawn on the input image

Next is the mask image:

New mask image

Now you invert image using cv2.bitwise_not function. There you have option for giving mask where we give our mask image so that function operates only on the area in input image where there is white in mask image.

cv2.bitwise_not(gray2,gray2,mask)

And finally show the image :

cv2.imshow('IMG',gray2)
cv2.waitKey(0)
cv2.destroyAllWindows()

And here is the result:

enter image description here


NOTE:

Above method is done to preserve "ORANGE" in white square. That is why some artifacts are there. If you don't want that orange also, it can be more accurate.

Just find the bounding rectangle for area-filtered contours and draw rectangle filled with black color.

Code :

import cv2
import numpy as np

img = cv2.imread('bus.png')
img = cv2.resize(img,(400,500))
gray = cv2.cvtColor(img,cv2.COLOR_BGR2GRAY)
ret,gray = cv2.threshold(gray,127,255,0)
gray2 = gray.copy()

contours, hier = cv2.findContours(gray,cv2.RETR_LIST,cv2.CHAIN_APPROX_SIMPLE)
for cnt in contours:
    if 200<cv2.contourArea(cnt)<5000:
        (x,y,w,h) = cv2.boundingRect(cnt)
        cv2.rectangle(gray2,(x,y),(x+w,y+h),0,-1)

cv2.imshow('IMG',gray2)
cv2.waitKey(0)
cv2.destroyAllWindows()

Result :

detected bounding rects:

enter image description here

Then fillout those rectangles with black:

enter image description here

It is better than previous , of course if you don't want "ORANGE")

4
  • why did you resize the image?
    – chostDevil
    Apr 22, 2012 at 10:49
  • It is because your image is so big that my screen can't include it as a whole. (Not so important here. avoid it if you don't like it. Also smaller images means more faster the operations.) by the way, which method you actually wanted? with ORANGE or without ORANGE? Apr 22, 2012 at 10:53
  • if you know c++ , please update your answer as i can't map between python and c++
    – chostDevil
    Apr 22, 2012 at 11:49
  • 4
    i am sorry, i dont know c++. But all functions are similar. Go to www.opencv.itseez.com, and enter the python function in search box. You will get correspoding C++ function with complete docs. They have tutorials also. By the way, i am using opencv 2.4beta. It is compatible with 2.3 or 2.2 also. Apr 22, 2012 at 12:35
1

You may use morphological filters (perhaps alternating sequential filtering) to simplify your multi-color image and then use a segmentation algorithm like watershed or some granulometry method and choose the largest object. You may find several implementations online. But this will work only if the logo is discrete (e.g. not on the background)

11
  • what do you mean by ( not on the background)
    – chostDevil
    Apr 21, 2012 at 20:34
  • @PatrickJones I mean if it's an image somewhere, and not one of those business cards where the logo is under the text and takes up the whole card. Or if the card is split into several color regions. There are many cases.
    – sivann
    Apr 21, 2012 at 20:38
  • what's morphological filters or alternating sequential filtering please discuss
    – chostDevil
    Apr 21, 2012 at 20:47
  • @PatrickJones morphological filters are connected filters, like dilation, erosion, opening, closing. ASF is using alternating opening and closing operators with different (larger each time) structuring element. Image analysis is a large and difficult topic, you could try to learn something from Mathwork's matlab demos: link
    – sivann
    Apr 21, 2012 at 21:25
  • I see you posted the image. Filtering should be done before reducing color depth to avoid having noise (like the black "hair" inside the white square on top). After that, you could use something like this sourceforge.net/projects/opencvbwlabel
    – sivann
    Apr 21, 2012 at 21:36

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