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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

http://matplotlib.sourceforge.net/users/image_tutorial-6.png

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)

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2 Answers 2

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(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 :

http://code.opencv.org/projects/opencv/repository/entry/trunk/opencv/samples/python2/hist.py

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])
    cv2.normalize(hist_item,hist_item,0,255,cv2.NORM_MINMAX)
    hist=np.int32(np.around(hist_item))
    for x,y in enumerate(hist):
        cv2.line(h,(x,0),(x,y),(255,255,255))
    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.)

EDIT :

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.

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  • @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, 2012 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 Jun 26, 2012 at 14:16
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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.

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  • 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, 2013 at 11:21
  • @samkhan13 yes, myRef is the histogram which we want to compare. Nov 20, 2013 at 12:36

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