Title :
Local Linear Estimators for the Bioelectromagnetic Inverse Problem
Author :
Greenblatt, Richard E. ; Ossadtchi, Alexei ; Pflieger, Mark E.
Author_Institution :
Source Signal Imaging Inc. San Diego CA, CA, USA
Abstract :
Linear estimators have been used widely in the bioelectromagnetic inverse problem, but their properties and relationships have not been fully characterized. Here, we show that the most widely used linear estimators may be characterized by a choice of norms on signal space and on source space. These norms depend, in part, on assumptions about the signal space and source space covariances. We demonstrate that two estimator classes (standardized and weight vector normalized) yield unbiased estimators of source location for simple source models (including only the noise-free case) but biased estimators of source magnitude. In the presence of instrumental (white) noise, we show that the nonadaptive standardized estimator is a biased estimator of source location, while the adaptive weight vector normalized estimator remains unbiased. A third class (distortionless) is an unbiased estimator of source magnitude but a biased estimator of source location.
Keywords :
biomedical imaging; covariance analysis; electroencephalography; inverse problems; magnetoencephalography; white noise; bioelectromagnetic inverse problem; biomedical electromagnetic imaging; electroencephalography; local linear estimator; magnetoencephalography; nonadaptive standardized estimator; signal space covariance; source space covariance; standardized vector normalized estimator class; weight vector normalized estimator class; white noise; Amplitude estimation; Electroencephalography; Helium; Instruments; Inverse problems; Magnetoencephalography; Position measurement; Vectors; White noise; Yield estimation; Biomedical electromagnetic imaging; electroencephalography; magnetoencephalography;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2005.853201