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Improved underwater signal detection using efficient time-frequency de-noising technique and Pre-whitening filter

机译:使用高效的时频去噪技术和预白化滤波器改进了水下信号检测

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Optimal signal detection is important in sonar and underwater digital communication. However, a detailed knowledge of the statistics of the noise present is required to achieve optimal signal detection. Additive white Gaussian noise (AWGN) is assumed in many applications; thus, a linear correlator (LC), which is known to be optimal in the presence of AWGN, is normally used. However, underwater acoustic noise (UWAN) influences the reliability of signal detection in applications, in which the noise is non-white and non-Gaussian. As a result, an LC detector performs poorly in underwater applications. Accordingly, the Gaussian noise injection detector (GNID) is proposed in this study to improve detection probability (P-D) based on a noise-enhanced signal detection using a pre-whitening filter, a time-frequency de-noising method based on S-transform, and an inverse whitening filter. Sea-truth data are collected at Desaru Beach on the eastern shore of Johor in Malaysia using broadband hydrophones. These data are used as UWAN to validate the proposed method. The performances of four different detectors, namely, the proposed GNID, a locally optimal (LO) detector, a sign correlation (SC) detector, and a conventional LC detector, are evaluated according to their P-D values. Given a false alarm probability of 0.01 and P-D value of 90%, the energy-to-noise ratios of the GNID are better than the 10, SC, and LC detectors by 1.77, 3.81, and 3.61 dB, respectively, for a time-varying signal. (C) 2017 Elsevier Ltd. All rights reserved.
机译:最佳信号检测在声纳和水下数字通信中很重要。但是,需要获得有关噪声统计信息的详细知识才能实现最佳信号检测。在许多应用中假定加性高斯白噪声(AWGN)。因此,通常使用在AWGN存在时最佳的线性相关器(LC)。但是,水下噪声(UWAN)会影响应用中信号检测的可靠性,在该应用中,噪声为非白色且非高斯噪声。结果,LC检测器在水下应用中表现较差。因此,在这项研究中提出了高斯噪声注入检测器(GNID),以提高基于使用预白化滤波器的噪声增强信号检测,基于S变换的时频去噪方法的检测概率(PD)。 ,以及反白化滤镜。使用宽带水听器在马来西亚柔佛东海岸的Desaru海滩收集海真数据。这些数据用作UWAN来验证所提出的方法。根据它们的P-D值评估了四个不同检测器的性能,即建议的GNID检测器,局部最优(LO)检测器,符号相关(SC)检测器和常规LC检测器。在0.01的误报概率和90%的PD值的情况下,GNID的能量噪声比在时间上分别比10,SC和LC检测器好1.77、3.81和3.61 dB。变化的信号。 (C)2017 Elsevier Ltd.保留所有权利。

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