4.7 Article

Frequency Estimation by Interpolation of Two Fourier Coefficients: Cramer-Rao Bound and Maximum Likelihood Solution

期刊

IEEE TRANSACTIONS ON COMMUNICATIONS
卷 70, 期 10, 页码 6819-6831

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2022.3200679

关键词

Frequency estimation; DFT interpolation; Cramer-Rao bound; parameter estimation

资金

  1. Italian Ministry of Education and Research (MIUR)

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This study investigates the estimation of sinusoidal frequency in the presence of white Gaussian noise, focusing on DFT interpolation methods and optimization. Evaluating the CRB and maximum likelihood DFT interpolator helps assess the accuracy and applicability of the methods. This is important for improving estimation accuracy and reducing computational burden.
Sinusoidal frequency estimation in the presence of white Gaussian noise plays a major role in many engineering fields. Significant research in this area has been devoted to the fine tuning stage, where the discrete Fourier transform (DFT) coefficients of the observation data are interpolated to acquire the residual frequency error epsilon. Iterative interpolation schemes have recently been designed by employing two q-shifted spectral lines symmetrically placed around the DFT peak, and the impact of q on the estimation accuracy has been theoretically assessed. Such analysis, however, is available only for some specific algorithms and is mostly conducted under the assumption of a vanishingly small frequency error, which makes it inappropriate for the first stage of any iterative process. In this work, further investigation on DFT interpolation is carried out to examine some issues that are still open. We start by evaluating the Cramer-Rao bound (CRB) for frequency recovery by interpolation of two q-shifted spectral lines and assess its dependence on epsilon and q. Such a bound is of primary importance to check whether existing schemes can provide efficient estimates at any iteration or not. After determining the optimum value of q for a given epsilon, we eventually derive the maximum likelihood (ML) DFT interpolator. Since the latter exhibits the best performance at any step of the iteration process, it might attain the desired accuracy just at the end of the first iteration, which is especially advantageous in terms of computational load and processing time.

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