Title :
A general maximum likelihood classifier for modulation classification
Author :
Le Martret, C. ; Boiteau, D.
Author_Institution :
Centre d´Electron. de l´ARmeinent, Bruz, France
Abstract :
This paper deals with maximum likelihood (ML) classification of digital communication signals. We first propose a new approximation of the average likelihood function. Then we introduce the General Maximum Likelihood Classifier (GMLC) based on this approximation which can be applied to a wide range of classification problem involving finite mean power signals. Derivation of this classifier equations are given in the case of linear modulations with an application to the MPSK / M PSK problem. We show that the new tests are a generalization of the previous ones using ML approach, and don´t need any restriction on the baseband pulse. Moreover, the GMLC provides a theoretical foundation for many empirical classification systems including those of that exploit cyclostationarity property of digital modulated signals.
Keywords :
digital communication; maximum likelihood estimation; phase shift keying; GMLC; M PSK; average likelihood function; cyclostationarity property; digital communication signals; digital modulated signals; general maximum likelihood classifier; linear modulations; maximum likelihood classification; modulation classification; Approximation methods; Baseband; Correlation; Frequency estimation; Maximum likelihood estimation; Phase shift keying;
Conference_Titel :
Signal Processing Conference (EUSIPCO 1998), 9th European
Conference_Location :
Rhodes
Print_ISBN :
978-960-7620-06-4