Title :
Nonlinear Noise Filtering with Support Vector Regression
Author :
Zhangjian ; QiCong, Peng ; Huaizong, Shao ; Tiange, Shao
Author_Institution :
Sch. of Commun. & Inf. Eng., UEST, Chendu
Abstract :
This paper introduces the novel application of support vector machine for filtering of time-series signal corrupted by Gaussian and non-Gaussian noise. In real world, the case of non-Gaussian noise (e.g. impulse noise, signal dependent noise) is very common. The optimal Wiener filter, which is a linear approach, can yield good results to Gaussian white noise, but performs poorly in case of non-Gaussian noise. Considering the noise filtering problem as a mapping of noisy signal to the corresponding noise free signal, we utilize the support vector regression (SVR) tool to discover the dependency so as to implement the noise filter. Comparing with the Wiener filter, SVR performs better in case of non-Gaussian. In this paper, we generate the original signal by an AR model, and then corrupt them with Gaussian and impulse noise respectively. The performance of mean squared error (MSE) is compared with wiener filter and multiple layer perceptron (MLP)
Keywords :
Gaussian noise; Wiener filters; impulse noise; mean square error methods; multilayer perceptrons; nonlinear filters; regression analysis; support vector machines; time series; white noise; Gaussian noise; Gaussian white noise; impulse noise; mean squared error; multiple layer perceptron; noise free signal; noisy signal; nonGaussian noise; nonlinear noise filtering; optimal Wiener filter; support vector regression tool; time-series signal; Gaussian noise; Information filtering; Information filters; Noise generators; Nonlinear filters; Polynomials; Signal mapping; Statistics; Support vector machines; Wiener filter;
Conference_Titel :
Intelligent Systems Design and Applications, 2006. ISDA '06. Sixth International Conference on
Conference_Location :
Jinan
Print_ISBN :
0-7695-2528-8
DOI :
10.1109/ISDA.2006.207