keyboard_arrow_up
Comparative Analysis of Filters and Wavelet Based Thresholding Methods for Image Denoising

Authors

Anutam and Rajni, SBSSTC, India

Abstract

Image Denoising is an important part of diverse image processing and computer vision problems. The important property of a good image denoising model is that it should completely remove noise as far as possible as well as preserve edges. One of the most powerful and perspective approaches in this area is image denoising using discrete wavelet transform (DWT). In this paper comparative analysis of filters and various wavelet based methods has been carried out. The simulation results show that wavelet based Bayes shrinkage method outperforms other methods in terms of peak signal to noise ratio (PSNR) and mean square error(MSE) and also the comparison of various wavelet families have been discussed in this paper.

Keywords

Denoising, Filters, Wavelet Transform, Wavelet Thresholding

Full Text  Volume 4, Number 5