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I have this gray video stream: enter image description here

The histogram of this image:

enter image description here

The thresholded image by :

  threshold( image, image, 150, 255, CV_THRESH_BINARY );

i get :

enter image description here

Which i expect.

When i do adaptive thresholding with :

adaptiveThreshold(image, image,255,ADAPTIVE_THRESH_GAUSSIAN_C, CV_THRESH_BINARY,15,-5);

i get :

enter image description here

Which looks like edge detection and not thresholding. What i expected was black and white areas . So my question is, why does this look like edge detection and not thresholding.

thx in advance

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2 Answers 2

up vote 6 down vote accepted

Adaptive Threshold works like this:

The function transforms a grayscale image to a binary image according to the formulas:

    THRESH_BINARY

        dst(x,y) = \fork{\texttt{maxValue}}{if $src(x,y) > T(x,y)$}{0}{otherwise}

    THRESH_BINARY_INV

        dst(x,y) = \fork{0}{if $src(x,y) > T(x,y)$}{\texttt{maxValue}}{otherwise}

where T(x,y) is a threshold calculated individually for each pixel.

Threshold works differently:

The function applies fixed-level thresholding to a single-channel array.

So it sounds like adaptiveThreshold calculates a threshold pixel-by-pixel, whereas threshold calculates it for the whole image -- it measures the whole image by one ruler, whereas the other makes a new "ruler" for each pixel.

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If i would do a blob analysis on the image which has been thresholded adaptively. Would the middle square be 1 blob ? (I'm doing surface detection, still have to see how the blob detection works in opencv, that's why i ask it first) –  Ojtwist Nov 29 '11 at 18:22
    
I don't know that it would, probably the white specs would be. Look at this book, page 231, section 6.2 for a comparison of blob analysis with different thresholding: books.google.com/… –  djhaskin987 Nov 29 '11 at 18:34

I had the same issue doing adaptive thresholding for OCR purposes. (sorry this is Python not C++)

img = cv.LoadImage(sys.argv[1])
bwsrc = cv.CreateImage( cv.GetSize(img), cv.IPL_DEPTH_8U, 1)
bwdst = cv.CreateImage( cv.GetSize(img), cv.IPL_DEPTH_8U, 1)

cv.CvtColor(img, bwsrc, cv.CV_BGR2GRAY)
cv.AdaptiveThreshold(bwsrc, bwdst, 255.0, cv.CV_THRESH_BINARY, cv.CV_ADAPTIVE_THRESH_MEAN_C,11)
cv.ShowImage("threshhold", bwdst)
cv.WaitKey()

The last paramter is the size of the neighborhood used to calculate the threshold for each pixel. If your neighborhood is too small (mine was 3), it works like edge detection. Once I made it bigger, it worked as expected. Of course, the "correct" size will depend on the resolution of your image, and size of the features you're looking at.

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