Title :
The application of nonlinear structures to the reconstruction of binary signals
Author :
Gibson, Gavin J. ; Siu, Sammy ; Cowan, Colin F N
Author_Institution :
Roke Manor Res., Romsey, UK
fDate :
8/1/1991 12:00:00 AM
Abstract :
The problem of reconstructing digital signals which have been passed through a dispersive channel and corrupted with additive noise is discussed. The problems encountered by linear equalizers under adverse conditions on the signal-to-noise ratio and channel phase are described. By considering the equalization problem as a geometric classification problem the authors demonstrate how these difficulties can be overcome by utilizing nonlinear classifiers as channel equalizers. The manner in which neural networks can be utilized as adaptive channel equalizers is described, and simulation results which suggest that the neural network equalizers offer a performance which exceeds that of the linear structures, particularly in the high-noise environment, are presented
Keywords :
equalisers; neural nets; signal processing; additive noise; binary signals; channel equalizers; channel phase; digital signals; dispersive channel; geometric classification problem; linear equalizers; multilayer perceptrons; neural networks; nonlinear classifiers; nonlinear structures; signal reconstruction; signal-to-noise ratio; Additive noise; Dispersion; Equalizers; Finite impulse response filter; Image processing; Image reconstruction; Neural networks; Pattern recognition; Senior members; Signal to noise ratio;
Journal_Title :
Signal Processing, IEEE Transactions on