Identifying Optimal Gaussian Filter for Gaussian Noise Removal

In this paper we show that the knowledge of noise statistics contaminating a signal can be effectively used to choose an optimal Gaussian filter to eliminate noise. Very specifically, we show that the additive white Gaussian noise (AWGN) contaminating a signal can be filtered best by using a Gaussian filter with specific characteristics. The design of the Gaussian filter bears relationship with the noise statistics in addition to some basic information about the signal. We first derive a relationship between the properties of the Gaussian filter, the noise statistics and the signal and later show through experiments that this relationship can be used effectively to identify the optimal Gaussian filter that can effectively filter noise.

[1]  Nikolay N. Ponomarenko,et al.  Locally Adaptive DCT Filtering for Signal-Dependent Noise Removal , 2007, EURASIP J. Adv. Signal Process..

[2]  Benedetto Piccoli,et al.  A fast computation method for time scale signal denoising , 2009, Signal Image Video Process..

[3]  A. S. Kolokolov Signal Preprocessing for Speech Recognition , 2002 .

[4]  Michael A. Kouritzin,et al.  Nonlinear filtering with signal dependent observation noise , 2009 .

[5]  Sunil Kumar Kopparapu,et al.  Effect of noise-in-speech on MFCC parameters , 2009 .

[6]  Y. Yang,et al.  Random interpolation average for signal denoising , 2010 .

[7]  William K. Pratt,et al.  Generalized Wiener Filtering Computation Techniques , 1972, IEEE Transactions on Computers.

[8]  Sunil Kumar Kopparapu,et al.  Knotless spline noise removal technique for improved OHCR , 2010, 2010 International Conference on Signal and Image Processing.

[9]  Houjun Wang,et al.  Signal Denoising Based on EMD , 2009, 2009 IEEE Circuits and Systems International Conference on Testing and Diagnosis.

[10]  R. Fisher,et al.  Curve Fitting , 1936, Nature.

[11]  J. Morel,et al.  On image denoising methods , 2004 .