Reason for Histogram Equalisation for having "stacked" effects?

I read in an image, run histeq on the it and store it as Img2. Then I run histeq again on Img2 and store it as Img3.
It turns out that when I compare the histograms of Img2 and Img3, the histogram of Img3 looks more equalised and uniform. Both Img2 and Img3, however, look almost identical with naked eyes.
This is a screenshot of their histograms. The one on the left is the histogram for Img2, while the right one is for Img3:
So it looks like the histogram equalisation can be "stacked" and by running many times can make the image even more uniform? Is there a reason for this?

 Akzeptierte Antwort

Image Analyst
Image Analyst am 11 Feb. 2013

0 Stimmen

What was your second input argument to histeq()?

4 Kommentare

I did not provide a second input argument into histeq(). I only provided the image data from imread() into histeq() as its first argument and that's all.
Why don't you try providing a flat histogram as a target and see how it does?
oh wait a minute, I just realise that I put 255 as my second argument. Would this matter?
Let's take a step back and figure out why you want to do histogram equalization anyway. Almost always it's unnecessary to the subsequent processing and analysis, and produces a lousy, unnatural looking image.

Melden Sie sich an, um zu kommentieren.

Weitere Antworten (0)

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by