Minimum Mean-Squared-Error Autocorrelation Processing in Coprime Arrays

10/21/2020
by   Dimitris G. Chachlakis, et al.
0

Coprime arrays enable Direction-of-Arrival (DoA) estimation of an increased number of sources. To that end, the receiver estimates the autocorrelation matrix of a larger virtual uniform linear array (coarray), by applying selection or averaging to the physical array's autocorrelation estimates, followed by spatial-smoothing. Both selection and averaging have been designed under no optimality criterion and attain arbitrary (suboptimal) Mean-Squared-Error (MSE) estimation performance. In this work, we design a novel coprime array receiver that estimates the coarray autocorrelations with Minimum-MSE (MMSE), for any probability distribution of the source DoAs. Our extensive numerical evaluation illustrates that the proposed MMSE approach returns superior autocorrelation estimates which, in turn, enable higher DoA estimation performance compared to standard counterparts.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/13/2018

Optimal designs for frequentist model averaging

We consider the problem of designing experiments for the estimation of a...
research
05/25/2021

Model Mismatch Trade-offs in LMMSE Estimation

We consider a linear minimum mean squared error (LMMSE) estimation frame...
research
11/27/2022

Generalizing Gaussian Smoothing for Random Search

Gaussian smoothing (GS) is a derivative-free optimization (DFO) algorith...
research
11/13/2020

A Generalized Focused Information Criterion for GMM

This paper proposes a criterion for simultaneous GMM model and moment se...
research
12/07/2018

Multitaper estimation on arbitrary domains

Multitaper estimators have enjoyed significant success in providing spec...

Please sign up or login with your details

Forgot password? Click here to reset