Title :
Noise suppressing sensor encoding and neural signal orthonormalization
Author :
Brause, Rüdiger W. ; Rippl, Michael
Author_Institution :
Dept. of Comput. Sci., Frankfurt Univ., Germany
fDate :
7/1/1998 12:00:00 AM
Abstract :
In this paper we regard first the situation where parallel channels are disturbed by noise. With the goal of maximal information conservation we deduce the conditions for a transform which “immunizes” the channels against noise influence before the signals are used in later operations. It shows up that the signals have to be decorrelated and normalized by the filter which corresponds for the case of one channel to the classical result of Shannon. Additional simulations for image encoding and decoding show that this constitutes an efficient approach for noise suppression. Furthermore, by a corresponding objective function we deduce the stochastic and deterministic learning rules for a neural network that implements the data orthonormalization. In comparison with other already existing normalization networks our network shows approximately the same in the stochastic case, but by its generic deduction ensures the convergence and enables the use as independent building block in other contexts, e.g., whitening for independent component analysis
Keywords :
convergence; correlation methods; decoding; encoding; filtering theory; neural nets; noise; convergence; data orthonormalization; deterministic learning rules; generic deduction; image decoding; image encoding; independent component analysis; maximal information conservation; neural network; neural signal orthonormalization; noise influence; noise suppressing sensor encoding; parallel channels; signals decorrelation; signals normalization; stochastic learning rules; whitening; Convergence; Decoding; Encoding; Filters; Frequency; Image coding; Image reconstruction; Neural networks; Stochastic resonance; Working environment noise;
Journal_Title :
Neural Networks, IEEE Transactions on