Journal of Systems Engineering and Electronics ›› 2007, Vol. 18 ›› Issue (2): 249-254.

• ELECTRONICS TECHNOLOGY • Previous Articles     Next Articles

Digital modulation classification using multi-layer perceptron and time-frequency features

Yuan Ye1 & Mei Wenbo2   

  1. 1. Dept. of Industrial Design and Information Engineering, Beijing Institute of Clothing Technology, Beijing 100029, P. R. China;
    2. Dept. of Electronic Engineering, Beijing Inst. of Technology, Beijing 100081, P. R. China
  • Online:2007-06-25 Published:2010-01-03

Abstract:

Considering that real communication signals corrupted by noise are generally nonstationary, and timefrequency distributions are especially suitable for the analysis of nonstationary signals, time-frequency distributions are introduced for the modulation classification of communication signals. The extracted time-frequency features have good classification information, and they are insensitive to signal to noise ratio (SNR) variation. According to good classification by the correct rate of a neural network classifier, a multilayer perceptron (MLP) classifier with better generalization, as well as, addition of time-frequency features set for classifying six different modulation types has been proposed. Computer simulations show that the MLP classifier outperforms the decision-theoretic classifier at low SNRs, and the classification experiments for real MPSK signals verify engineering significance of the MLP classifier.