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Noise robust time of arrival estimation method using hierarchical Bayesian based compressed sensing algorithm

机译:基于分层贝叶斯压缩感知算法的噪声鲁棒到达时间估计方法

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A microwave radar system is a useful tool for all-weather type remote sensing, such as terrain surface measurement. It is well known fact that a resolution of time-of-arrival (TOA) is strictly determined by the frequency bandwidth of transmitted signal. As super-resolution technique beyond such limitation, a compressed sensing (CS) algorithm has come under spotlight because a sparse assumption is well established in typical radar situations. However, the original CS method suffers from lower TOA resolution in insufficient SNR level. To address with such problem, this paper introduces a hierarchical Bayesian based CS algorithm. This method introduces the stochastic model derived from cross-correlation response as a priori information for CS reconstruction as hyper-prior distribution. The results of numerical simulation show that the proposed method enhances an accuracy for signal reconstruction, even in lower SNR situations.
机译:微波雷达系统是用于全天候型遥感(例如地形表面测量)的有用工具。众所周知的事实是,到达时间的分辨率(TOA)严格取决于发射信号的频率带宽。作为超分辨率技术的一种超越这种局限性的技术,压缩感知(CS)算法已成为人们关注的焦点,因为在典型的雷达情况下已经很好地建立了稀疏假设。然而,原始的CS方法在SNR水平不足的情况下具有较低的TOA分辨率。为了解决这个问题,本文介绍了一种基于贝叶斯的分层CS算法。该方法引入了从互相关响应得出的随机模型,作为用于CS重建的先验信息,作为超先验分布。数值仿真结果表明,所提出的方法即使在较低的SNR情况下也能提高信号重建的精度。

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