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水下目标融合识别技术研究现状与展望

夏庆升 刘义海

夏庆升, 刘义海. 水下目标融合识别技术研究现状与展望[J]. 水下无人系统学报, 2013, 21(3): 234-240. doi: 10.11993/j.issn.1673-1948.2013.03.016
引用本文: 夏庆升, 刘义海. 水下目标融合识别技术研究现状与展望[J]. 水下无人系统学报, 2013, 21(3): 234-240. doi: 10.11993/j.issn.1673-1948.2013.03.016
XIA Qing-sheng, LIU Yi-hai. Review of Fusion Recognition Technology for Underwater Target[J]. Journal of Unmanned Undersea Systems, 2013, 21(3): 234-240. doi: 10.11993/j.issn.1673-1948.2013.03.016
Citation: XIA Qing-sheng, LIU Yi-hai. Review of Fusion Recognition Technology for Underwater Target[J]. Journal of Unmanned Undersea Systems, 2013, 21(3): 234-240. doi: 10.11993/j.issn.1673-1948.2013.03.016

水下目标融合识别技术研究现状与展望

doi: 10.11993/j.issn.1673-1948.2013.03.016
详细信息
    作者简介:

    夏庆升(1966-), 男, 高级工程师, 长期从事水中兵器监造工作.

  • 中图分类号: TP212

Review of Fusion Recognition Technology for Underwater Target

  • 摘要: 回顾了近年来国内外关于信息融合功能模型结构的研究现状, 针对水下目标融合识别系统重点分析了具有数据、特征和决策3个融合层次的目标融合识别模型, 给出了各融合层次几种常用的典型算法, 即基于概率理论、数据分类理论以及人工智能理论的算法, 分析了各种算法的优缺点和应用约束。最后对水下基于多传感器的目标融合识别系统的发展动向、存在的问题和解决这些问题的思路进行了展望。

     

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出版历程
  • 收稿日期:  2013-03-13
  • 修回日期:  2012-05-06
  • 刊出日期:  2013-06-20

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