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noob here.

I have a (kind of) binary image that contains a known number of blobs that vary in shape and size. The pixel values in each blob equivalent to the blob index. I would like to process (using moments) only the largest 5 blobs.

At the moment I am iterating through every connected pixel incrementing a variable to get the area of each blob (see code below). I then process only the largest blobs as required, however this pixel iteration method is very slow in python.

 for i in range(1, objectCount):
            for h in range(im.height):
                for w in range(im.width):
                    pixVal = cv.Get2D(im, h, w)
                    if (pixVal[0] == i):

Is there a faster way to do this?

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2 Answers

up vote 2 down vote accepted

Here's the code to replace the above:

hist = cv.CreateHist([255], cv.CV_HIST_ARRAY, [[0,255]], 1)
cv.CalcHist([im] , hist)          
for h in range(255):
    zm = cv.QueryHistValue_1D(hist, h)
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Since your pixel values correspond to the blob ids, you could calculate the histogram of your image and select only the 5 highest column to avoid all those pixels iterations.

To calculate the histogram you could use the calcHist method of OpenCV.

Here it is a usage example.

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Cheers Muffo, that's a briliantly clever idea! I saves iterating through the pixels which is the most time consuming task. –  PDF417 Oct 3 '12 at 21:37
Thanks! If you think that my answer solves your problem, mark it as correct :) –  Muffo Oct 4 '12 at 6:44
Thanks.... just did. –  PDF417 Oct 4 '12 at 10:30
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