Denoising using local ICA and kernel-PCA

We present a denoising algorithm for enhancing noisy signals based on local independent component analysis (ICA). This is done by applying ICA to the signal in localized delayed coordinates. The components resembling the signals can be detected by various criteria depending on the nature of the signal. Estimators of kurtosis or the variance of the autocorrelation have been considered. The algorithm proposed can favorably be applied to the problem of denoising multidimensional data like images or fMRI data sets. In comparison to denoising algorithms using wavelets, Wiener filters and kernel PCA the local PCA and ICA algorithms perform considerably better. We provide applications of the algorithm to images and the analysis of protein NMR spectra.

[1]  Pierre Comon Independent component analysis - a new concept? signal processing , 1994 .

[2]  A.M. Tome Blind source separation using a matrix pencil , 2000, Proceedings of the IEEE-INNS-ENNS International Joint Conference on Neural Networks. IJCNN 2000. Neural Computing: New Challenges and Perspectives for the New Millennium.

[3]  Aapo Hyvärinen,et al.  A Fast Fixed-Point Algorithm for Independent Component Analysis , 1997, Neural Computation.

[4]  Lang Tong,et al.  Indeterminacy and identifiability of blind identification , 1991 .

[5]  Ming Li,et al.  Minimum description length induction, Bayesianism, and Kolmogorov complexity , 1999, IEEE Trans. Inf. Theory.

[6]  Pierre Comon,et al.  Independent component analysis, A new concept? , 1994, Signal Process..

[7]  Ana Maria Tomé AN ITERATIVE EIGENDECOMPOSITION APPROACH TO BLIND SOURCE SEPARATION , 2001 .

[8]  Karl Pearson F.R.S. LIII. On lines and planes of closest fit to systems of points in space , 1901 .

[9]  Christian Jutten,et al.  Space or time adaptive signal processing by neural network models , 1987 .

[10]  Nuno Ferreira,et al.  On-line source separation of temporally correlated signals , 2002, 2002 11th European Signal Processing Conference.

[11]  Phillip A. Regalia,et al.  On the behavior of information theoretic criteria for model order selection , 2001, IEEE Trans. Signal Process..

[12]  K. Lehnertz,et al.  Nonlinear denoising of transient signals with application to event-related potentials , 2000, physics/0001069.

[13]  Elmar Lang,et al.  A Matrix Pencil Approach to the Blind Source Separation of Artifacts in 2D NMR Spectra , 2003 .

[14]  Hagit Messer,et al.  On the use of order statistics for improved detection of signals by the MDL criterion , 2000, IEEE Trans. Signal Process..

[15]  Zhi Ding,et al.  A two-stage algorithm for MIMO blind deconvolution of nonstationary colored signals , 2000, IEEE Trans. Signal Process..