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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Micro-Doppler Period Estimation Based on Concentration Statistics of Ambiguity Function
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Micro-Doppler Period Estimation Based on Concentration Statistics of Ambiguity Function

机译:基于歧义函数浓度统计的微多普勒周期估计

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摘要

Radar micro-Doppler (m-D) signature, which reflects the micromotion dynamic and structural characteristics of radar target with micromotion, has received increasing attention. Most of the existing m-D signature-extraction methods operate in the time domain or the time-frequency domain. Different from these methods, in this paper, an m-D period estimation approach that operates in the ambiguity domain is proposed. Although the ambiguity function (AF) has been widely used in the field of radar signal processing, its application for m-D signal is introduced for the first time. It is proved that the AF of m-D signal exhibits periodicity along the lag axis and has the best concentration when the lag equals to multiples of the m-D period. Based on this, three AF concentration statistics are employed to capture the periodicity and to provide the m-D estimate. The most important property of the AF concentration statistics is that they are (or approximately) invariant to polynomial translations with terms not larger than second order even if the signal is Doppler ambiguous. Numeric simulation and real radar experiments are used to validate the effectiveness of the proposed technique.
机译:雷达微多普勒(M-D)签名,其反映了微观雷达靶的微观动态和结构特征,得到了越来越长的关注。大多数现有的M-D签名 - 提取方法在时域或时频域中运行。在本文中,提出了一种在歧义域中操作的M-D周期估计方法。虽然歧义功能(AF)已广泛用于雷达信号处理领域,但首次引入其对M-D信号的应用。事实证明,M-D信号的AF沿滞后轴表现出周期性,并且当滞后等于M-D时段的倍数时具有最佳浓度。基于此,采用三种AF集中统计来捕获周期性并提供M-D估计。 AF集中统计数据最重要的属性是,即使信号是多普勒含糊不清的,它们是(或大约)不变的多项式翻译。数字仿真和实际雷达实验用于验证所提出的技术的有效性。

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    Natl Univ Def Technol Coll Elect Sci Changsha 410073 Peoples R China;

    Natl Univ Def Technol Coll Elect Sci Changsha 410073 Peoples R China;

    Natl Univ Def Technol Coll Elect Sci Changsha 410073 Peoples R China|Delft Univ Technol NL-2628 Delft Netherlands;

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