中国邮电高校学报(英文) ›› 2011, Vol. 18 ›› Issue (1): 84-90.doi: 10.1016/S1005-8885(10)60032-5

• Artificial Intelligence • 上一篇    下一篇

Application of kernel methods in signals modulation classification

周欣1,吴瑛2,王大磊2   

  1. 1. 信息工程大学信息工程学院
    2.
  • 收稿日期:2010-06-04 修回日期:2010-11-11 出版日期:2011-02-28 发布日期:2011-02-28
  • 通讯作者: 周欣 E-mail:hnswallowfly@163.com
  • 基金资助:

    自然科学基金

Application of kernel methods in signals modulation classification

  • Received:2010-06-04 Revised:2010-11-11 Online:2011-02-28 Published:2011-02-28
  • Contact: ZHOU Xin E-mail:hnswallowfly@163.com

摘要:

A new approach to common signals classification of relevance vector machine (RVM) was presented and two signal classifiers based on kernel methods of support vector machine (SVM) and RVM were compared and analyzed. First several robust features of signals were extracted as the input of classifiers, then the kernel thought was used to map feature vectors impliedly to the high dimensional feature space, and multi-class RVM and SVM classifiers were designed to complete AM, CW, SSB, MFSK and MPSK signals recognition. Simulation result showed that when chose proper parameter, RVM and SVM had comparable accuracy but RVM had less learning time and basis functions. The classification speed of RVM is much faster than SVM.

关键词:

kernel function, sparse Bayesian model, RVM, SVM

Abstract:

A new approach to common signals classification of relevance vector machine (RVM) was presented and two signal classifiers based on kernel methods of support vector machine (SVM) and RVM were compared and analyzed. First several robust features of signals were extracted as the input of classifiers, then the kernel thought was used to map feature vectors impliedly to the high dimensional feature space, and multi-class RVM and SVM classifiers were designed to complete AM, CW, SSB, MFSK and MPSK signals recognition. Simulation result showed that when chose proper parameter, RVM and SVM had comparable accuracy but RVM had less learning time and basis functions. The classification speed of RVM is much faster than SVM.

Key words:

kernel function, sparse Bayesian model, RVM, SVM