A three-way incremental-learning algorithm for radar emitter identification

被引:0
作者
Xin Xu
Wei Wang
Jianhong Wang
机构
[1] Nanjing Research Institute of Electronic Engineering (NRIEE),Science and Technology on Information System Engineering Laboratory
[2] Nanjing University,State Key Laboratory for Novel Software and Technology
来源
Frontiers of Computer Science | 2016年 / 10卷
关键词
radar emitter identification; incremental learning; classification; data mining;
D O I
暂无
中图分类号
学科分类号
摘要
Radar emitter identification has been recognized as an indispensable task for electronic intelligence system. With the increasingly accumulated radar emitter intelligence and information, one key issue is to rebuild the radar emitter classifier efficiently with the newly-arrived information. Although existing incremental learning algorithms are superior in saving significant computational cost by incremental learning on continuously increasing training samples, they are not adaptable enough yet when emitter types, features and samples are increasing dramatically. For instance, the intra-pulse characters of emitter signals could be further extracted and thus expand the feature dimension. The same goes for the radar emitter type dimension when samples from new radar emitter types are gathered. In addition, existing incremental classifiers are still problematic in terms of computational cost, sensitivity to data input order, and difficulty in multiemitter type identification. To address the above problems, we bring forward a three-way incremental learning algorithm (TILA) for radar emitter identification which is adaptable for the increase in emitter features, types and samples.
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页码:673 / 688
页数:15
相关论文
共 79 条
  • [1] Zhou Z H(2002)Hybrid decision tree Knowledge-Based Systems 15 515-528
  • [2] Chen Z Q(2003)A general framework for mining massive data streams Journal of Computational and Graphical Statistics 12 945-949
  • [3] Domingos P(2013)Classification and adaptive novel class detection of feature-evolving data streams IEEE Transaction on Knowledge and Data Engineering 25 1484-1497
  • [4] Hulten G(2005)The huller: a simple and efficient online SVM Lecture Notes in Computer Science 3720 505-512
  • [5] Masud M M(2011)A simple derivation of a bound on the rerceptron margin using singular value decomposition Neural Computation 23 1935-1943
  • [6] Chen Q(2011)Pegasos: primal estimated sub-gradient solver for SVM Mathematical Programming 127 3-30
  • [7] Khan L(2002)The relaxed online maximum margin algorithm Machine Learning 46 1-3
  • [8] Aggarwal C C(1991)Fuzzy ARTMAP: a neural network architecture for incremental supervised learning of analog multidimensional maps IEEE Transactions on Neural Networks 3 698-713
  • [9] Gao J(2001)Learn++: an incremental learning algorithm for supervised neural networks IEEE Transactions on Systems, Man, and Cybernetics 31 497-508
  • [10] Han J(2006)Parameter incremental learning algorithm for neural networks IEEE Transactions on Neural Networks 17 1424-1438