# Gaussian blur image histogram of Y channel

I'm new to computer vision and image processing, anyway I'm trying to calculate the histogram of image y_channel which has previously been blurred with cv2.GaussianBlur and converted from BGR to YCr-cb color space. However the end result isn't quite what I was expecting, it doesn't seems to have the typical look of a Gaussian distribution. The following is my image and plot.

And this is the code snippet.

``````    cv2.imwrite("/home/carlo/face.png", roi2)
yuma = cv2.split(img)[0]
Hist = yuma.flatten().tolist()
grayscales  = np.unique(Hist)
frequencies = [Hist.count(x) for x in grayscales]
plt.figure()
plt.bar(grayscales,frequencies,color='g',edgecolor='k')
plt.show()
``````

Can anyone tell what I'm doing wrong? Thanks

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Why do you expect the histogram to be Gaussian? It will be a somewhat smeared version of the original distribution, but not necessarily Gaussian. Compare what you got to the original distribution of the image. –  Warren Weckesser Feb 9 at 23:02
@WarrenWeckesser I edited the question, I guess the face luminance should look like a Gaussian histogram. –  haar Feb 9 at 23:26
@WarrenWeckesser perhaps it might helpfull to know that I'm following this paper www2.tku.edu.tw/~tkjse/15-2/10-IE9920.pdf, section 3.2 –  haar Feb 9 at 23:33
it looks like your image is too bright and you have saturated the luminace channel –  tcaswell Feb 10 at 0:17
@tcaswell yes you're right I tried in different light conditions and I've got a positive result(by positive I mean a Gaussian look alike histogram). Thanks a lot! –  haar Feb 10 at 0:25