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I have been having difficulty trying to generate a histogram for a 640x480 grayscale image I am working with.

I am using Python 2.7.3, OpenCV 2.4.6 (Python bindings) and Numpy

The image below was generated from the same image, using an executable software tool (programmed in C++)

The properties for this histogram were:

bins = 50
hist_width = 250
normalised_height_max = 50

BW Histo

The image specs are therefore 250x50

I have consulted this documentation:

Histogram Calculation in OpenCV http://docs.opencv.org/doc/tutorials/imgproc/histograms/histogram_calculation/histogram_calculation.html

Hist.py - OpenCV Python Samples https://github.com/Itseez/opencv/blob/master/samples/python2/hist.py

The code in the second reference compiles fine, yet I have tried to edit it to get these block style columns rather than the thin lines and I can't seem to get it right.

import cv2
import numpy as np

cv2.namedWindow('colorhist', cv2.CV_WINDOW_AUTOSIZE)

img = cv2.imread('sample_image.jpg')
h = np.zeros((50,256))

bins = np.arange(32).reshape(32,1)
hist_item = cv2.calcHist([img],0,None,[32],[0,256])
cv2.normalize(hist_item,hist_item,64,cv2.NORM_MINMAX)
hist=np.int32(np.around(hist_item))
pts = np.column_stack((bins,hist))
cv2.polylines(h,[pts],False,(255,255,255))

h=np.flipud(h)

cv2.imshow('colorhist',h)
cv2.waitKey(0)

I am aiming to make my histogram with the following specs:

bins = 32
hist_width = 256
normalised_height_max = 64

How can I fix this code in order to achieve a histogram like the one above with the specs specified?

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I have managed to solve the problem:

import cv2
import numpy as np

#Create window to display image
cv2.namedWindow('colorhist', cv2.CV_WINDOW_AUTOSIZE)

#Set hist parameters

hist_height = 64
hist_width = 256
nbins = 32
bin_width = hist_width/nbins

#Read image in grayscale mode
img = cv2.imread('sample_image.jpg',0)

#Create an empty image for the histogram
h = np.zeros((hist_height,hist_width))

#Create array for the bins
bins = np.arange(nbins,dtype=np.int32).reshape(nbins,1)

 #Calculate and normalise the histogram
hist_item = cv2.calcHist([img],[0],None,[nbins],[0,256])
cv2.normalize(hist_item,hist_item,hist_height,cv2.NORM_MINMAX)
hist=np.int32(np.around(hist_item))
pts = np.column_stack((bins,hist))

#Loop through each bin and plot the rectangle in white
for x,y in enumerate(hist):
    cv2.rectangle(h,(x*bin_width,y),(x*bin_width + bin_width-1,hist_height),(255),-1)

#Flip upside down
h=np.flipud(h)

#Show the histogram
cv2.imshow('colorhist',h)
cv2.waitKey(0)

This was the result:

New Hist

Note that the bottom of the image is slightly different to the C++ implementation. I assume this is due to rounding somewhere in the code

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