I am working with OpenCV on the Android platform. With the tremendous help from this community and techies, I am able to successfully detect a sheet out of the image.

These are the step I used.

  1. Imgproc.cvtColor()
  2. Imgproc.Canny()
  3. Imgproc.GausianBlur()
  4. Imgproc.findContours()
  5. Imgproc.approxPolyDP()
  6. findLargestRectangle()
  7. Find the vertices of the rectangle
  8. Find the vertices of the rectangle top-left anticlockwise order using center of mass approach
  9. Find the height and width of the rectangle just to maintain the aspect ratio and do warpPerspective transformation.

After applying all these steps I can easily get the document or the largest rectangle from an image. But it highly depends on the difference in the intensities of the background and the document sheet. As the Canny edge detector works on the principle of intensity gradient, a difference in intensity is always assumed from the implementation side. That is why Canny took into the account the various threshold parameters.

  1. Lower threshold
  2. Higher threshold

So if the intensity gradient of a pixel is greater than the higher threshold, it will be added as an edge pixel in the output image. A pixel will be rejected completely if its intensity gradient value is lower than the lower threshold. And if a pixel has an intensity between the lower and higher threshold, it will only be added as an edge pixel if it is connected to any other pixel having the value larger than the higher threshold.

My main purpose is to use Canny edge detection for the document scanning. So how can I compute these thresholds dynamically so that it can work with the both cases of dark and light background?

I tried a lot by manually adjusting the parameters, but I couldn't find any relationship associated with the scenarios.

  • to the one who down vote , can you please explain whats wrong with this ? Jan 24, 2014 at 5:15
  • 3
    there are geniuses who love voting down, it's a good question for me. Aug 18, 2016 at 18:15
  • Imgproc.cvtColor() in which color we should convert ? A grayscale ?
    – TapanHP
    Oct 6, 2016 at 11:48
  • Hey can you please provide full implementation and code of above steps ? or a link where i can get anything.. It would b great help, because we are following your steps for our project @AnkurGautam
    – TapanHP
    Oct 6, 2016 at 11:56

2 Answers 2


You could calculate your thresholds using Otsu’s method.

The (Python) code would look like this:

high_thresh, thresh_im = cv2.threshold(im, 0, 255, cv2.THRESH_BINARY + cv2.THRESH_OTSU)
lowThresh = 0.5*high_thresh
  • 1
    Im needs to be a gray scale image ? The main problem i am facing is, though the background looks different than the sheet of paper but in the gray scale ,since both of them almost the same intensity ,they look same. Jan 24, 2014 at 8:12
  • And hence canny edge detector is not able to detect the edges of the sheet that sharply(3 of the four edges are detected sharp but in the other edge ,there is a gap but depending upon the real life images it should not be advised to predict the other edge based on three edges ?) I tried with dilation to fill the gap ,but it seems creating other problems(giving some extra edges) based on the Kernal used(A rectangle of 2*2 generally). I will give it a try to compute parameters of canny using your method . And by the time if you have any thought ,please share with me. Jan 24, 2014 at 8:12
  • 1
    Maybe you should look for a better Segmentation strategy. Jan 24, 2014 at 8:14
  • I don't want to do the segmentation more exactly.I want to scan the pages out of the image(remove the extra things and warp perspective things) ,that is more like the functionality used by the camScanner app. They can easily detect the edges easily even on the almost same background. As i am new to openCV,i want to know if there is any filter or something else that enlarge the intensity difference between the parts of the image(i mean create more intensity gradient but in the original format) Jan 24, 2014 at 8:18
  • not giving me the desired result or perhaps i should say the bad as compared to previous parameters.Value of Higher Threshold comes out to be around 121 Jan 24, 2014 at 9:48

Use the following snippet which I obtained from this blog:

v = np.median(gray_image)

#---- Apply automatic Canny edge detection using the computed median----
lower = int(max(0, (1.0 - sigma) * v))
upper = int(min(255, (1.0 + sigma) * v))
edged = cv2.Canny(gray_image, lower, upper)

##So what am I doing here?

I am taking the median value of the gray scale image. The sigma value of 0.33 is chosen to set the lower and upper threshold. 0.33 value is generally used by statisticians for data science. So it is considered here as well.


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.