# How to get threshold value from histogram?

I'm writing an Android app in OpenCV to detect blobs. One task is to threshold the image to differentiate the foreground objects from the background (see image).

It works fine as long as the image is known and I can manually pass a threshold value to threshold()--in this particular image say, 200. But assuming that the image is not known with the only knowledge that there would be a dark solid background and lighter foreground objects how can I dynamically figure out the threshold value?

I've come across the histogram where I can compute the intensity distribution of the grayscale image. But I couldn't find a method to analyze the histogram and choose the value where the objects of interest (lighter) lies. That is; I want to differ the obviously dark background spikes from the lighter foreground spikes--in this case above 200, but in another case could be say, 100 if the objects are grayish.

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There`s a bunch of methods for that. Maybe Otsu's Method might work for you. If not it still is a good starting point IMHO. en.wikipedia.org/wiki/Otsu%27s_Method –  krynr Jun 29 '12 at 17:44
Can you upload image on which 100 threshold is good? Because on the image above 50 threshold is also acceptable... –  ArtemStorozhuk Jun 29 '12 at 18:15

If all your images are like this, or can be brought to this style, i think cv2.THRESHOLD_OTSU, ie otsu's tresholding algorithm is a good shot.

Below is a sample using Python in command terminal :

``````>>> import cv2
>>> import numpy as np

>>> ret,thresh = cv2.threshold(img2,0,255,cv2.THRESH_BINARY+cv2.THRESH_OTSU)

>>> ret
122.0
``````

`ret` is the threshold value which is automatically calculated. We just pass '0' as threshold value for this.

I got 124 in GIMP ( which is comparable to result we got). And it also removes the noise. See result below:

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If you say that background is dark (black) and foreground is lighter, than I recommend to use YUV color space (or any other YXX like YCrCb etc), because the first component of such color spaces is luminance (or lightning).

So after Y channel is extracted (via `extractChennel` function) we need to analyse histogram of this channel (image):

See the first (left) hump? It represents black objects (or background in your situation) on your image. So our aim now is to find such segment (on abscissa, it's red part in the image) that contains this hump. Obviously the left point of this segment is zero. The right point is the first point that:

• (local) maximum of histogram is from the left of the point
• value of histogram is less than some small epsilon (you can take it as 10)

I drew a green vertical line to show where's second point of the segment in this histogram.

And that's it! This right point of the segment is needed threshold. Here's result (epsilon is 10 and calculated threshold is 50):

I think that it's not a problem for you to delete noise in the image above.

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