An SNR Unaware
Large Margin Automatic Modulations Classifier in Variable SNR Environments
Hamidreza Hosseinzadeh and Farbod Razzazi
Department
of Electrical and Computer Engineering, Science and Research Branch, Islamic
Azad University, Iran
Abstract:Automatic
classification of modulation type in detected signals is an intermediate step
between signal detection and demodulation, and is also an essential task for an
intelligent receiver in various civil and military applications. In this paper,
a new two-stage partially supervised classification method is proposed for
Additive White Gaussian Noise (AWGN) channels with unknown signal to noise
ratios, in which a system adaptation to the environment Signal-to-Noise Ratios
(SNR) and signals classification are combined. System adaptation to the
environment SNR enables us to construct a blind classifier to the SNR. In the classification phase of this algorithm, a
passive-aggressive online learning algorithm is applied to identify the
modulation type of input signals. Simulation results show that the accuracy of
the proposed algorithm approaches to a well-trained system in the target SNR,
even in low SNRs.
Keywords:Automatic modulation classification, pattern
recognition, partially supervised classification,passive-aggressive classifier,
SNR un-aware classification.
Received January 27, 2015; accepted March 9, 2014