SSP'05 IEEE/SP 13th workshop on Statistical Signal Processing
July, 17-20, 2005 - Bordeaux - France

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Title
Adaptive M-Estimators For Use In Structured and Unstructured Robust Covariance Estimation
Author(s)
Christopher Brown Darmstadt University of Technology
Ramon Brcich Darmstadt University of Technology
Christian Debes Darmstadt University of Technology
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Abstract

Covariance estimation is necessary in many applications such as source detection in array processing. Unfortunately, the sample covariance estimator is not robust. Here we investigate two broad approaches to robust covariance matrix estimation. The first is a model-free element-wise procedure, while the second is a structured approach based on pre-whitening. Both approaches utilise a robust one-dimensional scale estimator. It is the choice of this scale estimator and its effect on the overall covariance estimator that is the main purpose of this study. An adaptive M-estimator of scale is shown to have several advantages. Depending on the final comparison criterion, its use in a structured or element-wise covariance matrix estimator can lead to improved, robust performance.

©2005 IEEE
Edition : Télécom Paris -- 2005