Designing a Framework for Noise dependent Filter Selection Algorithm
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Abstract
This work provides a framework to design an automatic filtering algorithm, which will work
according to the noise present in the image. For this purpose, can be used about the working of
the non linear geometric, diffusion, enhanced Frost, Lee, Homogeneous mass area, Wiener and
Median filter for different of images. This comparative study is based on the output of the noisy
and the filtered images using these filters. Three types of Noises: Gaussian, Poisson and Speckle
are used to produces Noisy images from noise free image for the purpose of evaluation.
Parameters are characterized on the basis of some standard image quality matrices like SNR,
correlation coefficient, mean square error and peak signal to noise ratio. The performance of
these filters is evaluated by comparative study of values of these parameters of noisy, filtered and
original images. Based upon this analysis, results are compiled. These statistical metrics are also
displayed graphically and they are compared for both the noisy and the filtered images.
