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An Experimental Investigation on Convolution Analysis towards Multi-Wavelet based Medical Image De-Noising

Abha Choubey, Manuraj Jaiswal

Abstract


The Image denoising naturally corrupted by noise is a
classical problem in the field of signal or image processing. Denoising of a natural images corrupted by Gaussian noise using multi-wavelet techniques are very effective because of its ability to capture the energy of a signal in few energy transfer values. Multi-wavelet can satisfy with symmetry and asymmetry which are very important characteristics in signal processing. The better denoising result depends on the degree of the noise. Generally, its energy is distributed
over low frequency band while both its noise and details are
distributed over high frequency band. Corresponding hard threshold used in different scale high frequency sub-bands. In this paper proposed to indicate the suitability of different wavelet and multi-wavelet based and a size of different neighborhood on the performance of image denoising algorithm in terms of PSNR value. Finally it compares wavelet and multi-wavelet techniques and produces best denoised image using multi-wavelet technique based on the performance of image denoising algorithm in terms of PSNR
Values.


Keywords


Gaussian Noise, PSNR Values, Multi-Wavelet

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References


D. L. Donoho, "Denoising By Soft-Thresholding," IEEE Transactions On

Information Theory, VOL. 41, PP.613-627, 1995.

Bui, G. Y. Chen, "Translation Invariant De-Noising Using

Multiwavelets," IEEE Transactions On Signal Processing, VOL.46, NO.

, PP.3414-3420, 1998.

L. Sendur and I. W. Selesnick, "Bi-variate Shrinkage with Local Variance

Estimation," IEEE Signal Processing Letters, Vol. 9, No. 12, pp.

-441,2002.

G. Y. Chen and T. D. Bui, "Multi-wavelet De-noising using Neighboring

Coefficients," IEEE Signal Processing Letters, vol. 10, no.7, pp.211-214,

Sendur Land Selesnick I W 2002 Bivariate Shrinkage Functions FOR

Wavelet-Based Denoising Exploiting Interscale Dependency IEEE Trans

Signal Processing

Lin K Z, Li D P and Hua K Q 2000 Operator Description of Image

Wavelet Denoising Journal of Harbin University of Science And

Technology 5 8 -12.

S QZhang, X H Xu, J T Lv, X Y Xang and N He of an Improved

Approach To Image Denoising Based On Multi- Wavelet and Threshold,

International Symposium on Instrumentation Science and Technology,

Journal of Physics.

R. J. Vidmar. (1992, August). On the use of atmospheric plasmas as

electromagnetic reflectors. IEEE Trans. Plasma Sci. [Online]. 21(3). pp.

—880.

RathaJeyalakshmi and Ramar, "A Modified Method for Speckle Noise

Removal in Ultrasound Medical Images", International Journal of

Computerand Electrical Engineering, Vol. 2, No. 1, pp. 54-58, February,

Ahmed Badawi, Michael Johnson and Mohamed Mahfouz, "Scattered

Density in Edge and Coherence Enhancing Nonlinear Anisotropic

Diffusion for Medical Ultrasound Speckle Reduction", International

Journal of Biological and Life Sciences, Vol. 3, No. 1, pp. 1-24, 2007

Ratnaparkhe, Manthalkar and Joshi, ―Texture Characterization of CT

Images Based on Ridge let Transform‖, ICGST-GVIP Journal, Vol. 8,

No. 5, pp. 43-50, January 2009

Sudha, Suresh and Sukanesh, "Speckle Noise Reduction in Ultrasound

Images by Wavelet Thresholding based on Weighted Variance",

International Journal of Computer Theory and Engineering, Vol. 1, No. 1,

pp. 7-12, April 2009

Pierrick Coupe, Pierre Hellier, Charles Kervrann and Christian Barillot,

"Non local Means-Based Speckle Filtering for Ultrasound Images", IEEE

Transactions on Image Processing, Vol. 18, No. 10, pp. 2221-2229,

October 2009.

YangWang and Haomin Zhou, "Total Variation Wavelet-Based Medical

Image Denoising", International Journal of Biomedical Imaging, Vol.

, pp.1-6, January 2006

Fernanda Palhano Xavier de Fontes, Guillermo Andrade Barroso and

Pierre Hellier, "Real time ultrasound image denoising", Journal of

Real-Time Image Processing, Vol. 1, pp.1-14, April 2010

Tanaphol Thaipanich and Jay Kuo, "An Adaptive Nonlocal Means

Scheme for Medical Image Denoising", In Proceedings of SPIE Medical

Imaging, Vol. 7623, San Diego, CA, USA, February 2010


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