Journal of Systems Engineering and Electronics ›› 2010, Vol. 32 ›› Issue (7): 1471-1475.doi: 10.3969/j.issn.1001506X.2010.07.028

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Techniques for target recognition based on adaptive intuitionistic fuzzy inference

LEI Yang, LEI Yingjie, HUA Jixue, KONG Weiwei, CAI Ru   

  1. (Missile Inst., Air Force Engineering Univ., Sanyuan 713800, China)
  • Online:2010-07-20 Published:2010-01-03

Abstract:

To the issues of target recognition (TR), a technique for TR based on adaptive neurointuitionistic fuzzy inference system (ANIFIS) is proposed with intuitionistic fuzzy inference—neural nets theory introduced into the area of information fusion. First, after analyzing the properties and vulnerabilities of the existing TR methods, ANIFIS is proposed. Moreover, because the logical system can be mapped a fuzzy multilayer feedforward nets system, a model for TR on ANIFIS with TakagiSugeno type is established. Then, the attribute functions, i.e., membership and nonmembership functions, and the inference rules of the system variables are devised with computational relations between layers of input and output and a synthesized computational expression. Subsequently, a learning algorithm of neural net is devised to train net and modify rules. Finally, the output results and recognition precision based on two techniques, including intuitionistic fuzzy inference and ANIFIS, are analyzed and compared by providing TR instances with 20 typical targets. The simulated results show that it is a more practical and valid technique on decisionmaking fusion which can improve recognition precision and training speed.

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