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A GTCC-Based Underwater HMM Target Classifier with Fading Channel Compensation

机译:基于GTCC的水下HMM目标分类器,具有衰落信道补偿

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摘要

Underwater acoustic target classifiers are found to have many applications in military and security areas where a higher degree of prediction accuracy is needed that makes classifier efficiency and reliability an interesting subject. Classifiers are often trained with known acoustic target specimens with their characteristic feature set and tested with measurements obtained from the sonar that is deployed in the surveillance or observation zone. The selection of source-specific deterministic features in automatic target recognition (ATR) system is very significant, since it determines the reliability, efficiency, and success rate of the classifier. The robustness of the gammatone cepstral coefficients (GTCC) in combination with the statistical Euclidean distance, artificial neural network (ANN), and hidden Markov model (HMM) classifiers has been investigated, and its performance is compared with that of other feature extraction schemes. The classifier performance has been analyzed in Rayleigh fading conditions, based on which the performance is enhanced by incorporating an autoregressive (AR) Rayleigh fading channel compensation. The performance of the classifier in different operating conditions is investigated, with underwater target signals consisting of the real field data collected during expedition, and the results are presented in this paper.
机译:发现水下的声学目标分类器在军事和安全区域中具有许多应用,其中需要更高程度的预测精度,使分类器效率和可靠性成为一个有趣的主题。分类器经常用已知的声学目标样本培训,其特征特征设​​置并使用从部署在监视或观察区中部署的声纳获得的测量来测试。自动目标识别(ATR)系统中的源特定确定功能的选择非常显着,因为它决定了分类器的可靠性,效率和成功率。已经研究了γ焦穴系数(GTCC)与统计欧几里德距离,人工神经网络(ANN)和隐藏马尔可夫模型(HMM)分类器组合的鲁棒性,并将其性能与其他特征提取方案的性能进行了比较。在瑞利衰落条件下已经分析了分类器性能,基于该条件,通过结合自回归(AR)瑞利衰落通道补偿来增强性能。研究了分类器在不同操作条件下的性能,水下目标信号由探险期间收集的真实场数据组成,并在本文中提出了结果。

著录项

  • 来源
    《Journal of Sensors》 |2018年第2期|共14页
  • 作者单位

    Bharathiar Univ Res &

    Dev Ctr Coimbatore 641046 Tamil Nadu India;

    Cochin Univ Sci &

    Technol Dept Elect Cochin 682022 Kerala India;

    Cochin Univ Sci &

    Technol Dept Elect Cochin 682022 Kerala India;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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