Automatic Modulation Recognition using Support Vector Machine in Software Radio Applications

Most of the algorithms proposed in the literature deal with the problem of digital modulation classification. This paper discusses the modulation classifiers capable of classifying both analog and digital modulation signals in military and civilian communications applications. A total of 7 statistical signal features are extracted and used to classify 9 modulation signals. In this paper, we investigate the performance of the two types of SVM classifiers and compare the performance of these SVM classifiers with that of decision tree based and minimum distance based classifiers. In numerical simulations, SVM classifiers indicate good performance (i.e. probability of correct classification > 95%) on an AWGN channel, even at signal-to-noise ratios as low as 5 dB.

[1]  John Platt,et al.  Large Margin DAG's for Multiclass Classification , 1999 .

[2]  Stefan C. Kremer,et al.  A testbed for automatic modulation recognition using artificial neural networks , 1997, CCECE '97. Canadian Conference on Electrical and Computer Engineering. Engineering Innovation: Voyage of Discovery. Conference Proceedings.

[3]  M.N.S. Swamy,et al.  Automatic modulation type recognition , 1998, Conference Proceedings. IEEE Canadian Conference on Electrical and Computer Engineering (Cat. No.98TH8341).

[4]  A. K. Nandi,et al.  Procedure for automatic recognition of analogue and digital modulations , 1996 .

[5]  Zhilu Wu,et al.  Automatic Digital Modulation Recognition Based on Support Vector Machines , 2005, 2005 International Conference on Neural Networks and Brain.

[6]  Nello Cristianini,et al.  Large Margin DAGs for Multiclass Classification , 1999, NIPS.

[7]  Cheol-sun Park,et al.  A novel robust feature of modulation classification for reconfigurable software radio , 2006, IEEE Transactions on Consumer Electronics.