Gaussian Filter
Syntax:
B = imgaussfilt(A, sigma); // To obtain the filtered image using gaussian filter:
// imgaussfilt() is the built-in function in Matlab, which takes 2 parameters.
To display the noisy and denoised image side by side in single frame: imshowpair(P{noisy, denoised}); title(noisy vs denoised’);
Example:
Matlab
% MATLAB code using Gaussian Filter % read the image. k=imread( "einstein_colored.jpg" ); % convert to grayscale. k=rgb2gray(k); % create the image corrupted with gaussian noise gaussian_noise=imnoise(k, 'gaussian' ,0,0.01); % create the image corrupted with poisson noise poisson_noise=imnoise(k, 'poisson' ); % create the image corrupted with salt & pepper noise salt_noise=imnoise(k, 'salt & pepper' , 0.05); % create the image corrupted with speckle noise speckle_noise=imnoise(k, 'speckle' , 0.05); % get the denoised image from gaussian_noise image. gaussian_denoised=imgaussfilt(gaussian_noise,1); % get the denoised image from poisson_noise image. poisson_denoised=imgaussfilt(poisson_noise, 1); % get the denoised image from salt_noise image. salt_denoised=imgaussfilt(salt_noise, 1); % get the denoised image from speckle_noise image. speckle_denoised=imgaussfilt(speckle_noise, 1); % display noised and denoised images side by side. montage({gaussian_noise,gaussian_denoised }); title( 'Gaussian noise and denoised image using gaussian filter' ); % display noised and denoised images side by side. montage({poisson_noise,poisson_denoised}); title( 'poisson noise img vs poisson denoised img' ); % display noised and denoised images side by side. montage({salt_noise,salt_denoised}); title( 'salt&pepper noise img vs denoised img' ); % display noised and denoised images side by side. montage({speckle_noise,speckle_denoised}); title( 'speckle noise img vs speckle denoised img' ); |
Output:
Gaussian filter relatively works better with gaussian and poison noise.
What are different types of denoising filters in MATLAB?
Digital images are prone to various types of noise that make the quality of the images worst. Image noise is a random variation of brightness or color information in the captured image. Noise is basically the degradation in image signal caused by external sources such as cameras. Images containing multiplicative noise have the characteristic that the brighter the area the noisier it. We shall discuss various denoising filters in order to remove these noises from the digital images.
Types of filters discussed in this article are listed as:
- Mean filter
- Median filter
- Gaussian filter
- Wiener filter