基于随机信号的快速相位差doa估计

Hui Chen, Tarig Ballal, T. Al-Naffouri
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引用次数: 3

摘要

信号的到达方向(DOA)信息在通信、定位、目标跟踪等方面具有重要意义。基于频域的时延估计能够在子样本精度下实现DOA;然而,它受到阶段包装问题的困扰。本文提出了一种基于频率分集的方法来克服相位包裹问题。受随机蕨类植物的机器学习技术的启发,提出了一种加快搜索过程的算法。基于三种不同的信号模型,通过仿真和实验测试对算法的性能进行了评估。结果表明,在保持相同精度的情况下,使用随机蕨类植物可以将搜索时间减少到穷举方法的1/6。所提出的搜索方法具有较低的DOA估计误差,优于基于频率分集的基准算法。
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FAST PHASE-DIFFERENCE-BASED DOA ESTIMATION USING RANDOM FERNS
Direction of arrival (DOA) information of a signal is important in communications, localization, object tracking and so on. Frequency-domain-based time-delay estimation is capable of achieving DOA in subsample accuracy; however, it suffers from the phase wrapping problem. In this paper, a frequency-diversity based method is proposed to overcome the phase wrapping problem. Inspired by the machine learning technique of random ferns, an algorithm is proposed to speed up the search procedure. The performance of the algorithm is evaluated based on three different signal models using both simulations and experimental tests. The results show that using random ferns can reduce search time to 1/6 of the search time of the exhaustive method while maintaining the same accuracy. The proposed search approach outperforms a benchmark frequency-diversity based algorithm by offering lower DOA estimation error.
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