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Differential delay/Doppler ML estimation with unknown signals

机译:未知信号的差分延迟/多普勒ML估计

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摘要

Previously published analyses on the maximum-likelihood estimation of joint frequency and time offsets between two noisy versions of a common signal have assumed a Gaussian random signal with a known power spectrum. In many applications, the common signal is not Gaussian and there may be no prior knowledge of its detailed structure. Instead, estimation of a hypothesized common signal can be construed as another element in the estimation process. The analysis is straightforward and shows that the complex ambiguity function (CAF) still represents the ML approach when the noise is Gaussian and spectrally flat. Additional interpretation shows that use of interference-rejection filtering followed by a CAF is an attractive suboptimum approach in an environment of narrowband interferers.
机译:先前发布的有关共同信号的两个噪声版本之间的联合频率和时间偏移的最大似然估计的分析已假定具有已知功率谱的高斯随机信号。在许多应用中,公共信号不是高斯信号,并且可能没有其详细结构的先验知识。相反,可以将假设的公共信号的估计解释为估计过程中的另一要素。该分析很简单,表明当噪声为高斯且频谱平坦时,复数模糊函数(CAF)仍代表ML方​​法。额外的解释表明,在窄带干扰源环境中,使用干扰抑制过滤后再进行CAF是一种有吸引力的次优方法。

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