How to make salt pepper noise own code
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Ali Umur Kucur
el 22 de Abr. de 2020
Respondida: DGM
el 22 de Abr. de 2022
After creating a matrix with the for loop, how can we assign the values 0 and 255 in the picture and add salt and pepper noise?
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Respuesta aceptada
Ameer Hamza
el 22 de Abr. de 2020
Editada: Ameer Hamza
el 22 de Abr. de 2020
Try this
im = imread('pears.png');
figure;
ax1 = axes();
imshow(im);
title(ax1, 'original');
a = 0.1; % 10% pixels altered
b = 0.5; % 50% percent white pixels among all altered pixels
n = numel(im(:,:,1));
m = fix(a*n);
idx = randperm(n, m);
k = fix(b*m);
idx1 = idx(1:k);
idx2 = idx(k+1:end);
idx1 = idx1' + n.*(0:size(im,3)-1);
idx1 = idx1(:);
idx2 = idx2' + n.*(0:size(im,3)-1);
idx2 = idx2(:);
im(idx1) = 255;
im(idx2) = 0;
figure;
ax2 = axes();
imshow(im);
title(ax2, 'noisy');
4 comentarios
Image Analyst
el 23 de Abr. de 2020
Ali, did you try my solution (or even see it below):
noisyImage = imnoise(originalImage,'salt & pepper', 0.05); % Or whatever percentage you want.
It's a lot simpler since it uses the built-in function.
Más respuestas (4)
David Welling
el 22 de Abr. de 2020
An easy way to do this is create a salt and pepper noise image to lay in front of the original image. So you need a way to randomly select pixels to make white. This can easily be done by creating a matrix the same size as your picture, filled with random numbers, and then select a cut off point above which you make pixels white, like this:
floor(rand(1000,1000)+0.01)*255; %array of 1000x1000, with approximately 1 percent white pixels. this can be adjusted by changing the 0.01 in the equation
Image Analyst
el 22 de Abr. de 2020
The easiest way is to use the built-in imnoise() function:
noisyImage = imnoise(originalImage,'salt & pepper', 0.05); % Or whatever percentage you want.
2 comentarios
Image Analyst
el 23 de Abr. de 2020
Why? It's not labeled as homework. If it is your assignment and you turned in Ameer's code as your own, then you could run into trouble with your teacher and institution (possibly cheating). In the future, tag homework with the homework tag so people don't give you complete solutions that will get you into trouble.
Mykola Ponomarenko
el 4 de Sept. de 2021
function [ima,map] = salt_and_pepper(ima, prob)
% ima - grayscale or color input image; prob - probability of salt&pepper noise (0..1)
[y,x,z]=size(ima);
map=repmat(rand(y,x)<prob, [1 1 z]);
sp=repmat(round(rand(y,x))*255, [1 1 z]);
ima(map)=sp(map);
end
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DGM
el 22 de Abr. de 2022
This is the way that MIMT imnoiseFB() does it when in fallback mode. This will replicate the behavior of IPT imnoise(). Note that this works regardless of the class of the input image.
inpict = imread('cameraman.tif');
snpdensity = 0.05; % default for imnoise()/imnoiseFB()
s0 = size(inpict);
noisemap = rand(s0);
outpict = im2double(inpict);
mk1 = noisemap < (snpdensity/2);
outpict(mk1) = 0;
outpict(~mk1 & (noisemap < snpdensity)) = 1;
imshow(outpict)
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