Hybrid radar emitter recognition based on rough k-means classifier and SVM

Author:

Wu Zhilu,Yang Zhutian,Sun Hongjian,Yin Zhendong,Nallanathan Arumugam

Abstract

Abstract Due to the increasing complexity of electromagnetic signals, there exists a significant challenge for recognizing radar emitter signals. In this article, a hybrid recognition approach is presented that classifies radar emitter signals by exploiting the different separability of samples. The proposed approach comprises two steps, i.e., the primary signal recognition and the advanced signal recognition. In the former step, the rough k-means classifier is proposed to cluster the samples of radar emitter signals by using the rough set theory. In the latter step, the samples within the rough boundary are used to train the support vector machine (SVM). Then SVM is used to recognize the samples in the uncertain area; therefore, the classification accuracy is improved. Simulation results show that, for recognizing radar emitter signals, the proposed hybrid recognition approach is more accurate, and has a lower time complexity than the traditional approaches.

Publisher

Springer Science and Business Media LLC

Reference22 articles.

1. Latombe G, Granger E, Dilkes F: Fast learning of grammar production probabilities in radar electronic support. IEEE Trans. Aerosp. Electron. Syst 2010, 46(3):1262-1290.

2. Ren M, Cai J, Zhu Y, He M: Radar emitter signal classification based on mutual information and fuzzy support vector machines. Proceedings of International Conference on Software Process 2008 2008, 1641-1646.

3. Bezousek P, Schejbal V: Radar technology in the Czech Republic. IEEE Aerosp. Electron. Syst. Mag 2004, 19(8):27-34. 10.1109/MAES.2004.1346896

4. Zhang G, Hu L, Jin W: Intra-pulse feature analysis of radar emitter signals. J. Infrared Millimeter Waves 2004, 23(6):477-480.

5. Swiercz E: Automatic classification of LFM signals for radar emitter recognition using wavelet decomposition and LVQ classifier. Acta Phys. Polonica A 2011, 119(4):488-494.

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