# Difference between adaptive thresholding and normal thresholding in opencv

I have this gray video stream:

The histogram of this image:

The thresholded image by :

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

i get :

Which i expect.

When i do adaptive thresholding with :

i get :

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.

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

THRESH_BINARY

THRESH_BINARY_INV

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 still do not get the behavior. What makes adaptive threshold different from lets say, applying a Gaussian blur then subtracting it and do a normal threshold. According to what the document describes they should be the same, but they are not, maybe sigma is a very big number. –  dashesy Aug 17 at 16:45

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