Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I want to segment images (from magazines) in text and image parts. I have several histograms for several ROIs in my picture. I use opencv with python (cv2).

I want to recognize histograms that look like this


as it is a typical shape for a text region. How can I do that?

Edit: Thank you for your help so far.

I compared the histograms I got from my ROIs to a sample histogram I provided:

hist = cv2.calcHist(roi,[0,1], None, [180,256],ranges)
compareValue = cv2.compareHist(hist, samplehist, cv.CV_COMP_CORREL)
print "ROI: {0}, compareValue: {1}".format(i,compareValue)

Assuming ROI 0, 1, 4 and 5 are text regions and ROI is an image region, I get output like this:

  • ROI: 0, compareValue: 1.0
  • ROI: 1, compareValue: -0.000195522081574 <--- wrong classified
  • ROI: 2, compareValue: 0.0612670248952
  • ROI: 3, compareValue: -0.000517370176887
  • ROI: 4, compareValue: 1.0
  • ROI: 5, compareValue: 1.0

What can I do to avoid wrong classification? For some images, the misclassification rate is about 30%, which is way too high.

(I tried also with CV_COMP_CHISQR, CV_COMP_INTERSECT, CV_COMP_BHATTACHARYY and (hist*samplehist).sum() but they also provide wrong compareValues)

share|improve this question
What have you tried so far? –  karlphillip Jun 22 '12 at 16:18

2 Answers 2

(See the EDIT at the end in case i misunderstood the question) :

If you are looking to draw the histograms, I had submitted one python sample to OpenCV, and you can get it from here :


It is used to draw two kinds of histograms. First one applicable to both color and grayscale images as shown here : http://opencvpython.blogspot.in/2012/04/drawing-histogram-in-opencv-python.html

Second one is exclusive for grayscale image which is same as your image in the question.

I will show the second and its modification.

Consider a full image as below :

enter image description here

We need to draw a histogram as you have shown. Check the below code:

import cv2
import numpy as np

img = cv2.imread('messi5.jpg')
mask = cv2.imread('mask.png',0)
ret,mask = cv2.threshold(mask,127,255,0)

def hist_lines(im,mask):
    h = np.zeros((300,256,3))
    if len(im.shape)!=2:
        print "hist_lines applicable only for grayscale images"
        #print "so converting image to grayscale for representation"
        im = cv2.cvtColor(im,cv2.COLOR_BGR2GRAY)
    hist_item = cv2.calcHist([im],[0],mask,[256],[0,255])
    for x,y in enumerate(hist):
    y = np.flipud(h)
    return y

histogram = hist_lines(img,None)

And below is the histogram we got. Remember it is histogram of full image. For that,we have given None for mask.

enter image description here

Now I want to find the histogram of some part of the image. OpenCV histogram function has got a mask facility for that. For normal histogram, you should set it None. Otherwise you have to specify the mask.

Mask is a 8-bit image, where white denotes that region should be used for histogram calculations, and black means it should not.

So I used a mask like below ( created using paint, you have to create your own mask for your purposes).

enter image description here

I changed the last line of code as below :

histogram = hist_lines(img,mask)

Now see the difference below :

enter image description here

(Remember, values are normalized, so values shown are not actual pixel count, normalized to 255. Change it as you like.)


I think i misunderstood your question. You need to compare histograms, right ?

If that is what you wanted, you can use cv2.compareHist function.

There is an official tutorial about this in C++. You can find its corresponding Python code here.

share|improve this answer
You are right, I need to compare histograms. –  ohyeah Jun 25 '12 at 12:49
@Abid Rahman K. What exactly the use of mask? I saw some function stated mask. Is it some kind which we can set the ROI of the image? –  Mzk Jun 26 '12 at 9:31
ya, normally roi is rectangular region, but with mask, you can take any shape. Check section of contours in my blog for more details. Opencvpython.blogspot.com –  Abid Rahman K Jun 26 '12 at 14:16

You can use a simple correlation metric.

  • make sure that the histogram you compute and your reference are normalized (ie represent probapilities)

  • for each histogram compute (given that myRef and myHist are numpy arrays):

    metric = (myRef * myHist).sum()

  • this metric is a measure of how much the histogram looks like your reference.

share|improve this answer
this is a really interesting idea. but what exactly do you mean by myRef? is it another histogram or same size as myHist? or is it any arbitrary numpy array? –  samkhan13 Nov 20 '13 at 11:21
@samkhan13 yes, myRef is the histogram which we want to compare. –  Simon Nov 20 '13 at 12:36

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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