Title :
Spread Spectrum Signals Classification Based on the Wigner-Ville Distribution and Neural Network Probability Density Function Estimation
Author_Institution :
Bialystok Tech. Univ., Bialystok
Abstract :
A spread spectrum signal recognition can be accomplished by exploiting the particular features of modulation presented in a received signal observed in presence of noise. These modulation features are the result of slight transmitter component variations and acts as an individual signature of a transmitter. The paper describes a spread spectrum signal classification algorithm based on using the Wigner-Ville distribution (WVD), noise reduction procedure with using a two- dimensional filter and the RBF neural network probability density function estimator which extracts the features vector used for the final signal classification. The numerical simulation results for the P4-coded signals are presented.
Keywords :
radial basis function networks; signal classification; signal denoising; statistical distributions; 2D filter; RBF neural network probability density function estimation; Wigner-Ville distribution; modulation features; noise reduction; spread spectrum signal classification; spread spectrum signal recognition; spread spectrum signals classification; Classification algorithms; Feature extraction; Filters; Neural networks; Noise reduction; Numerical simulation; Pattern classification; Probability density function; Spread spectrum communication; Transmitters;
Conference_Titel :
Computer Information Systems and Industrial Management Applications, 2007. CISIM '07. 6th International Conference on
Conference_Location :
Minneapolis, MN
Print_ISBN :
0-7695-2894-5
DOI :
10.1109/CISIM.2007.62