Performance Statistics of Autoregressive Short and Ultrashort Signal Detectors

V. M. Kutuzov, V. P. Ipatov, S. S. Sokolov
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Abstract

Introduction. Parametric spectral estimation methods provide an improved level of frequency resolution compared to matched signal processing conventionally used in radar technology. This renders these methods promising for application in cases where the sample size of a spatial or temporal signal is strictly limited. At the same time, parametric methods are not optimal when receiving single signals against the background of normal uncolored additive noise. Therefore, parametric methods can be used as independent approaches provided that, first, working detection statistics are selected and justified and, second, that detection characteristics and noise immunity are constructed and analyzed.Aim. This paper investigates modified detection statistics of the parametric Burg method, characterized by the simplicity of decision functions and the capacity to provide a constant false alarm probability under varying additive noise levels.Materials and methods. Statistical computer simulation of the detection algorithms under consideration was conducted. This method is widely used in the analysis of parametric methods of signal processing. The detection characteristics obtained in the work were compared using the well-known Burg harmonic mean method, which involves the lowest computational costs.Results. The paper presents original decision functions derived from the transformation of power spectral density estimates of the Burg method. The detection characteristics and immunity to signal-like interference of the modified Burg method are obtained and investigated, providing the basis for a comparative analysis of the proposed partial detection statistics. These are shown to retain the property of invariance of false alarm probability to the level of normal white noise.Conclusion. The obtained detection and noise immunity characteristics for ultrashort and short signal samples allow us to recommend the parametric Burg harmonic mean method, implemented on the basis of a forward and backward linear prediction algorithm, as an independent signal processing method under strict restrictions imposed on the size of the analyzed sample of spatial-temporal signals.
自回归短信号和超短信号检测器的性能统计
简介:参数频谱估算方法与雷达技术中常用的匹配信号处理相比,参数谱估计方法可提供更高水平的频率分辨率。因此,在空间或时间信号的样本大小受到严格限制的情况下,这些方法很有应用前景。与此同时,在接收正常无色加性噪声背景下的单个信号时,参数方法并非最佳选择。因此,参数方法可以作为独立的方法使用,前提是:首先,选择有效的检测统计量并证明其合理性;其次,构建并分析检测特性和抗噪声能力。本文研究了参数 Burg 方法的修正检测统计量,该方法的特点是决策函数简单,并能在不同的加性噪声水平下提供恒定的误报概率。对所考虑的检测算法进行了计算机统计模拟。这种方法广泛用于信号处理参数方法的分析。使用计算成本最低的著名布尔谐波均值法对工作中获得的检测特性进行了比较。论文介绍了通过对 Burg 方法的功率谱密度估计值进行变换而得出的原始决策函数。论文获得并研究了修改后的 Burg 方法的检测特性和对类似信号干扰的抗干扰能力,为对所提出的部分检测统计量进行比较分析奠定了基础。结果表明,这些数据保留了误报概率与正常白噪声水平无关的特性。通过对超短和短信号样本的检测和抗噪特性的研究,我们可以推荐基于前向和后向线性预测算法的参数布尔谐波均值法,将其作为一种独立的信号处理方法,并严格限制所分析的时空信号样本的大小。
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