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Compressive Parameter Estimation for Sparse Translation-Invariant Signals Using Polar Interpolation

机译:极值插值的稀疏平移不变信号压缩参数估计

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摘要

We propose new compressive parameter estimation algorithms that make use of polar interpolation to improve the estimator precision. Our work extends previous approaches involving polar interpolation for compressive parameter estimation in two aspects: (i) we extend the formulation from real non-negative amplitude parameters to arbitrary complex ones, and (ii) we allow for mismatch between the manifold described by the parameters and its polar approximation. To quantify the improvements afforded by the proposed extensions, we evaluate six algorithms for estimation of parameters in sparse translation-invariant signals, exemplified with the time delay estimation problem. The evaluation is based on three performance metrics: estimator precision, sampling rate and computational complexity. We use compressive sensing with all the algorithms to lower the necessary sampling rate and show that it is still possible to attain good estimation precision and keep the computational complexity low. Our numerical experiments show that the proposed algorithms outperform existing approaches that either leverage polynomial interpolation or are based on a conversion to a frequency-estimation problem followed by a super-resolution algorithm. The algorithms studied here provide various tradeoffs between computational complexity, estimation precision, and necessary sampling rate. The work shows that compressive sensing for the class of sparse translation-invariant signals allows for a decrease in sampling rate and that the use of polar interpolation increases the estimation precision.
机译:我们提出了新的压缩参数估计算法,该算法利用极坐标插值来提高估计器的精度。我们的工作在两个方面扩展了涉及极性内插的压缩参数估计方法:(i)将公式从实际的非负振幅参数扩展到任意复数振幅参数;(ii)允许参数描述的流形之间不匹配及其极坐标近似为了量化提议的扩展所提供的改进,我们评估了六种算法,用于估计稀疏平移不变信号中的参数,并以时间延迟估计问题为例。评估基于三个性能指标:估计器精度,采样率和计算复杂性。我们将压缩感知与所有算法一起使用以降低必要的采样率,并表明仍然有可能获得良好的估计精度并保持较低的计算复杂度。我们的数值实验表明,所提出的算法优于利用多项式插值法或基于对频率估计问题的转换以及超分辨率算法的现有方法。本文研究的算法在计算复杂度,估计精度和必要的采样率之间提供了各种折衷方案。这项工作表明,对于稀疏平移不变信号类别的压缩感测可以降低​​采样率,并且极坐标插值的使用可以提高估计精度。

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