Abstract
Due to the increasing complexity of modern multi-functional radars in the electromagnetic environment, it is a challenging task to classify and identify the presence of different radar emitters. The presence of multiple number of active transmitters in the multistatic radar system makes radar emitter identification a big data problem as all are emitting dense complex signals in the electronic reconnaissance field. In order to classify and identify the radar emitters accurately and rapidly many researchers proposed numerous algorithms. To determine the radar emitter identification methods developed, this paper reviews various methods and techniques through a literature survey and classification of articles (collected from the online database) has been made from various algorithms and methods point of view.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Zhang C, Han Y, Zhang P, Song G, Zhou C (2019) Research on modern radar emitter modelling technique under complex electromagnetic environment. J Eng 20:7134–7138
Li X, Huang Z, Wang F, Wang X, Liu T (2018) Toward convolutional neural networks on pulse repetition interval modulation recognition. IEEE Commun Lett 22(11):2286–2289
Ray PS (1998) A novel pulse TOA analysis technique for radar identification. IEEE Trans Aerosp Electron Syst 34(3):716–721
Nishiguchi KI, Kobayashi M (2000) Improved algorithm for estimating pulse repetition intervals. IEEE Trans Aerosp Electron Syst 36(2):407–421
Logothetis A, Krishnamurthy V (1998) An interval-amplitude algorithm for deinterleaving stochastic pulse train sources. IEEE Trans Signal Processing 46(5):1344–1350
Pu Y, Jin Z, Hu L (2008) A DOA-Based Separability Test and Confidence Evaluation Approach for Deinterleaving Pulse Sequence. Proceedings of Pacific-Asia Workshop on Computational Intelligence and Industrial Application (PACIIA) 2:954–957
Mao Y, Jun H, Guo G , Qing X (2009) An improved algorithm of PRI transform. In: WRI global congress on intelligent systems 3:145–149
Kawalec A, Rapacki T, Wnuczek S, Dudczyk J (2006) Mixed method based on intra pulse data and radiated emission to emitter sources recognition. In: International conference on microwaves, radar and wireless communications, pp 487–490
Ye H, Zheng l, Jiang W (2012) Comparison of unintentional frequency and phase modulation features for specific emitter identification. Electron lett 48:875–877
Zhang G, Laizhao H, Jin W (2003) Complexity feature extraction of radar emitter signals. In: Proceedings of Asia-Pacific conference on environmental electromagnetics, pp 495–498
Zhang HN, Rong LZ, Hu WD, Jin (2004) Entropy feature extraction approach of radar emitter signals. In: Proceedings of international conference on intelligent mechatronics and automation, pp 621–625
Huang G, Yang L (2004) Radar signal sorting based on blind signal extraction. In: Proceedings of international conference on signal processing, vol 3, pp 2120–2123
Kawalec A, Owczarek R (2006) Karhunen-Loeve transformation in radar signal features processing. In: Proceedings of international conference on microwaves, radar and wireless communications, pp 1168–1171
Dash D, Valarmathi J (2018) Multistatic radar emitter identification using entropy maximization based independent component analysis. J Eng Sci Technol 13(10):3238–3251
Jennison B, Brian K (2003) Detection of polyphase pulse compression waveforms using the Radon-ambiguity transform. IEEE Trans Aerosp Electron Syst 39(4):335–343
Dudczyk J, Kawalec A (2013) Identification of emitter sources in the aspect of their fractal features. Bull Polish Acad Sci Tech 61:623–628
Zhang G, Laizhao H, Weidong J (2004) A novel approach for radar emitter signal recognition. In: Proceedings of the Asia-Pacific conference on circuits and systems, vol 2, pp 817–820
Zhang G, Weidong JH (2004) Radar emitter signal recognition based on support vector machines. In: Proceedings of control, automation, robotics and vision, vol 2, pp 826–831
Ren M, Zhu Y, Mao Y, Han J (2007) Radar emitter signals classification using kernel principle component analysis and fuzzy support vector machines. In: Proceedings of international conference on wavelet analysis and pattern recognition, vol 3, pp 1442–1446
Swiercz E (2011) Automatic classification of LFM signals for radar emitter recognition using wavelet decomposition and LVQ classifier. Acta Phys Pol A 119:488–494
Camastra F, Alessandro V (2005) A novel kernel method for clustering. IEEE Trans Pattern Anal Mach Intell 27(9):801–805
Noone G (1995) Radar pulse train parameter estimation and tracking using neural networks. In: Proceedings of the international two-stream conference on artificial neural networks and expert systems, pp 95–98
Granger E, Savaria Y, Lavoie P (1998) A comparison of self-organizing neural networks for fast clustering of radar pulses. Signal Processing 64(3):249–269
Hassan S, Bhatti AI, Latif A (2005) Emitter recognition using fuzzy adaptation of ARTMAP neural networks, Multitopic Conference, pp 1–6
Shieh C, Lin C (2002) A vector neural network for emitter identification. IEEE Trans Antennas Propag 50(8):1120–1127
Liu H, Zhongmin L, Jiang W (2010) Incremental learning approach based on vector neural network for emitter identification. IET Signal Proc 4(1):45–54
Granger E, Rubin S, Lavoie P (2001) A what-and-where fusion neural network for recognition and tracking of multiple radar emitters. Neural Networks 14(3):325–344
Zhi-fu Y, Jun L, Kai L (2012) Radar emitter recognition based on PSO-BP network. AASRI Procedia 1:213–219
Wnuk M, Kawalec A, Dudczyk J (2006) The method of regression analysis approach to the specific emitter identification. In: Proceedings of the international conference on microwaves, radar and wireless communications, pp 491–494
Xu D, Bo Y, Jiang W, Zhou Y (2008) An improved SVDU-IKPCA algorithm for specific emitter identification. In: Proceedings of the IEEE international conference on information and automation, pp 692–696
Li L, Ji H (2011) Radar emitter recognition based on cyclostationary signatures and sequential iterative least-square estimation. Expert Syst Appl 38:2140–2147
Hassan S, Bhatti I, Latif A (2005) Emitter recognition using fuzzy inference system. Proceedings of the symposium on emerging technologies, pp 204–208
Guan X, Xiao Y A novel emitter recognition approach to incomplete information system. In: Proceedings of international conference on machine learning and cybernetics, pp 1271–1275
Xin G, Xiao Y (2007) Discretization of continuous interval-valued attributes in rough set theory and its application. Proc Int Conf Mach Learn Cybern 7:3682–3686
Qiang G, Zhang X, Jing Z (2010) Study on emitter signal recognition based on rough sets and grey association theory. In: Proceedings of the international conference on signal processing proceedings, pp 2336–2340
Chen X, Yang H, Tang M (2012) A probabilistic fuzzy method for emitter identification based on genetic algorithm. In: Proceedings of the IEEE international conference information fusion, pp 635–640
Xu-bo L, Gui-Hu G (2012) The application and improvement of Grey associated analysis theory in Radar Emitter Source signal's sorting and Identification. In: Proceedings of the global symposium on millimeter waves, pp 441–444
Wang L, Ji HB, Shi Y (2011) Feature optimization of ambiguity function for radar emitter recognition. J Infrared Millimeter Waves 30(1):74–79
Yang LB, Zhang SS, Xiao B. (2013) Radar emitter signal recognition based on time-frequency analysis. In: Proceedings of the IET international radar conference IET international, pp 1–4
Zhu J, Zhao Y, Tang J (2013) Automatic recognition of radar signals based on time-frequency image character. Defence Sci J 3(1)308–315
Dash D, Jayaraman VA (2020) A probabilistic model for sensor fusion using range-only measurements in multistatic radar, IEEE Sensors Letters 4(6) pp 1-4
Ren M, Cai J, Zhu Y, He M (2008) Radar emitter signal classification based on mutual information and fuzzy support vector machines. In: Proceedings of the IEEE international conference on signal processing, pp 1641–1646
Zhou Y, Lee JP (1999) A MDL approach for determining the number of emitters using intra-pulse information, In: Proceedings of the IEEE pacific rim conference on communications, computers and signal processing, pp 548–551
Ren MQ, Zhu YQ, Mao Y, Han J (2007) Radar emitter signals classification using kernel principle component analysis and fuzzy support vector machines. In Proceedings of the IEEE international conference on wavelet analysis and pattern recognition, vol 3, pp 1442–1446
Lee DW, Han JW, Song KH, Lee WD (2008) A kernel density window clustering algorithm for radar pulses. In: Proceedings of the International Conference on Convergence and Hybrid Information Technology, vol 1, pp 1048–1053
Hassan SA, Bhatti I, Latif A (2005) Emitter recognition using fuzzy inference system. In: Proceedings of the IEEE Symposium on Emerging Technologies, pp 204–208
Chen X, Hu W, Yang H, Tang M (2012) A probabilistic fuzzy method for emitter identification based on genetic algorithm. In: Proceedings of the IEEE international conference information fusion, pp 635–640
Chen X, Hu WD (2012) Approach based on interval type-2 fuzzy logic system for emitter identification, Electronics lett 48(18)1156–1158.
Li L, Ji H (2009) Combining multiple SVM classifiers for radar emitter recognition. In: Proceedings of the international conference on fuzzy systems and knowledge discovery. vol 1 2009
Zhang M, Gao DM, Liu L (2017) Neural Networks for Radar Waveform Recognition, Symmetry 9(5):75–92
Chen YM, Lin CM, Hsueh CS (2014) Emitter identification of electronic intelligence system using type-2 fuzzy classifier. Syst Sci Control Eng 2(1):389–397
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2021 Springer Nature Singapore Pte Ltd.
About this paper
Cite this paper
Dash, D., Valarmathi, J. (2021). Radar Emitter Identification in Multistatic Radar System: A Review. In: Komanapalli, V.L.N., Sivakumaran, N., Hampannavar, S. (eds) Advances in Automation, Signal Processing, Instrumentation, and Control. i-CASIC 2020. Lecture Notes in Electrical Engineering, vol 700. Springer, Singapore. https://doi.org/10.1007/978-981-15-8221-9_248
Download citation
DOI: https://doi.org/10.1007/978-981-15-8221-9_248
Published:
Publisher Name: Springer, Singapore
Print ISBN: 978-981-15-8220-2
Online ISBN: 978-981-15-8221-9
eBook Packages: EngineeringEngineering (R0)