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Optimum time-frequency distribution for detecting a discrete-time chirp signal in noise

机译:用于检测噪声中离散时间线性调频信号的最佳时频分布

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In the continuous-time domain, maximum-likelihood (ML) detection of a chirp signal in white Gaussian noise can be done by maximising (with respect to signal parameter arguments) the line-integral transform (LIT) of the classical Wigner distribution (of the observed signal). The LIT is known variously as the Hough transform and the Radon transform. For discrete-time signals, the Wigner-type distribution defined by Claasen and Mecklenbrauker has become popular as a signal analysis tool. Moreover, it is commonly believed that ML detection of a discrete-time chirp signal in independent and identically distributed (i.i.d.) Gaussian noise can be done by maximising the LIT of the Wigner-Claasen-Mecklenbrauker distribution (WCMD). This belief is false and results in loss of performance. The authors derive a Wigner-type distribution for discrete-time signals such that ML detection of a discrete-time chirp signal in i.i.d. Gaussian noise can be done by maximising the LIT of this distribution. Simulated receiver operating curves showing the performance advantage of the new method over the WCMD-based method are provided. The signal parameter values that maximise the LIT are taken as estimates of the actual parameters. The authors provide simulation results showing that the parameter estimates obtained using the new method are more accurate than those obtained using the WCMD-based method. For the WCMD-based method, the range of unambiguously measurable frequencies (RUMF) is [-pi/2, pi/2]. For the new method, the RUMF is [-pi, pi].
机译:在连续时间域中,可以通过最大化(相对于信号参数自变量)经典Wigner分布的线性积分变换(LIT)来完成高斯白噪声中线性调频信号的最大似然(ML)检测。观察到的信号)。 LIT被称为霍夫变换和拉顿变换。对于离散时间信号,由Claasen和Mecklenbrauker定义的Wigner型分布已成为一种流行的信号分析工具。此外,通常认为,通过最大化Wigner-Claasen-Mecklenbrauker分布(WCMD)的LIT可以完成独立且均匀分布(即i.d.)高斯噪声中离散时间线性调频信号的ML检测。这种信念是错误的,并导致性能下降。作者得出了离散时间信号的Wigner型分布,这样就可以在i.i.d中对离散时间线性调频信号进行ML检测。高斯噪声可以通过使该分布的LIT最大化来实现。提供了模拟的接收机工作曲线,显示了该新方法相对于基于WCMD的方法的性能优势。使LIT最大化的信号参数值被视为实际参数的估计值。作者提供的仿真结果表明,使用新方法获得的参数估计比使用基于WCMD的方法获得的参数估计更准确。对于基于WCMD的方法,明确可测量的频率(RUMF)的范围为[-pi / 2,pi / 2]。对于新方法,RUMF为[-pi,pi]。

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