How to filter an histogram with gaussian low pass filter ?

6 views (last 30 days)
I have MR slice of type double, I want to filter its histogram to smooth it using Gaussian Low Pass Filter. I know that the (imgaussfilt ) filter the image with a Gaussian filter but we need the standard deviation. Could any one tell me how to fix the value of the standart deviation ? is it the (std2) of the whole image ? Otherwise, if you have you any other prepositions, I will be greatful.
  4 Comments
MMSAAH
MMSAAH on 19 Dec 2017
Thank you for your reply. I want to smooth out the histogram of the original image (which is one slice MR image ) in order to smooth the most frequent ripples of the histogram and to distinguish the major peaks and valleys in the original histogram. So that convoluate the original histogram with the Low Pass Gaussian Filter will smooth the original histogram.
Jan
Jan on 19 Dec 2017
What is the final result? A modified histogram or do you want to modify the image, such that the histogram of the modified image is smoother?

Sign in to comment.

Accepted Answer

Image Analyst
Image Analyst on 19 Dec 2017
Just take the histogram counts and use conv() to smooth
windowSize = 15; % Adjust to control level of smoothing.
smoothedCounts = conv(counts(:), ones(windowSize, 1)/windowSize, 'same');
  2 Comments
MMSAAH
MMSAAH on 20 Dec 2017
Please how to fix the windowSize ? Is it an arbitrary choice ? Because when changing value of windowSize, the curve of the histogram change
Image Analyst
Image Analyst on 20 Dec 2017
What does "fix" mean. It IS a constant, "fixed" value, so do you have a different definition? I picked 15 arbitrarily, but like I said, you can pick different values to make the histogram smoother or less smooth (more like the original). There is not one, "right" value. It's totally up to you how much you want to smooth it.
Perhaps you'd like to use the MATLAB smoothed histogram that you get with fitdist(), if you have the Statistics and Machine Learning Toolbox.

Sign in to comment.

More Answers (0)

Community Treasure Hunt

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

Start Hunting!