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Comparison of Detection and Classification Algorithms Using Boolean and Fuzzy Techniques

机译:使用布尔和模糊技术的检测和分类算法的比较

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406204%Modern military ranging, tracking, and classification systems are capable of generating large quantities of data. Conventional "brute-force" computational techniques, even with Moore's law for processors, present a prohibitive computational challenge, and often, the system either fails to "lock onto" a target of interest within the available duty cycle, or the data stream is simply discarded because the system runs out of processing power or time. In searching for high-fidelity convergence, researchers have experimented with various reduction techniques, often using logic diagrams to make inferences from related signal data. Conventional Boolean and fuzzy logic systems generate a very large number of rules, which often are difficult to handle due to limitations in the processors. Published research has shown that reasonable approximations of the target are preferred over incomplete computations. This paper gives a figure of merit for comparing various logic analysis methods and presents results for a hypothetical target classification scenario. Novel multiquantization Boolean approaches also reduce the complexity of these multivariate analyses, making it possible to better use the available data to approximate target classification. This paper shows how such preprocessing can reasonably preserve result confidence and compares the results between Boolean, multi-quantization Boolean, and fuzzy techniques.
机译:406204%现代军事测距,跟踪和分类系统能够生成大量数据。常规的“蛮力”计算技术,即使采用处理器的摩尔定律,也带来了令人望而却步的计算挑战,并且通常,系统要么无法“锁定”在可用占空比内的目标目标,要么数据流只是简单的丢弃,因为系统用完了处理能力或时间。在寻找高保真收敛性时,研究人员尝试了各种归约技术,经常使用逻辑图从相关信号数据中进行推断。常规布尔和模糊逻辑系统生成大量规则,由于处理器的限制,这些规则通常很难处理。已发表的研究表明,目标的合理近似值比不完整的计算更为可取。本文给出了用于比较各种逻辑分析方法的优点,并给出了假设目标分类方案的结果。新颖的多量化布尔方法还降低了这些多变量分析的复杂性,从而可以更好地使用可用数据来近似目标分类。本文展示了这种预处理如何合理地保留结果置信度,并比较了布尔,多量化布尔和模糊技术之间的结果。

著录项

  • 来源
    《Advances in fuzzy systems》 |2012年第2012期|406204.1-406204.10|共10页
  • 作者

    Rahul Dirit; Harpreet Singh;

  • 作者单位

    Department of Engineering and Computer Engineering, Wayne State University, Detroit, Ml 48202, USA;

    Department of Electrical and Computer Engineering, Wayne State University, Detroit, MI 48202, USA;

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  • 正文语种 eng
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