I add additive '0' mean Gaussian noise to original image using
n=0+(sd)*randn(size(original image)) and i apply noise estimation algorithm to noisy image and i found additive noise.
If i needs to simulate noise estimation algorithm using multiplicative noise,how i generate noisy image with multiplicative noise? (only using 'randn' function, not using imnoise)

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Image Analyst
Image Analyst 2013년 3월 17일
편집: Image Analyst 2013년 3월 17일

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noiseOnlyImage = sd * randn(size(noiseFreeImage));
noisyImage = noiseFreeImage .* noiseOnlyImage;
% Cast to uint8 if you want.
imshow(noisyImage, []); % Use [] if it's a double image.

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vipul utsav
vipul utsav 2013년 3월 17일
is it called speckle noise?
Image Analyst
Image Analyst 2013년 3월 17일
It might be for radar but I'm nto sure if the PDF of radar noise is Gaussian. I know that the noise PDF of laser speckle is not Gaussian - it's an exponential decay, so no, your randn() noise does not work to simulate laser speckle.
vipul utsav
vipul utsav 2013년 3월 17일
noisyImage = noiseFreeImage .* noiseOnlyImage;
so above image is affected by multiplicative noise ,not a speckle
Image Analyst
Image Analyst 2013년 3월 17일
I didn't say that. Speckle can be a multiplicative noise. But speckle has a specific probability distribution function, which, for laser speckle, is not Gaussian.
The probability density function for laser speckle is
pdf = exp(-v/sigmaSquared) / sigmaSquared
from section 5.9 in book by Roy Frieden "Probability, Statistical Optics, and Data Testing". v is the intensity of the light. So you can see it's an exponential decay, not a Guassian because it depends on v not v^2.
what does sd mean? I see that it is not an inbuilt function. can someone explain this plss
Image Analyst
Image Analyst 2018년 5월 18일
sd is a variable that represents the standard deviation. It's something you assign a desired value to.

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