Robust Covariance Estimation for Data Fusion From Multiple Sensors

Loading...
Thumbnail Image

Date published

Free to read from

Authors

Sequeira, J.
Tsourdos, Antonios
Lazarus, S.

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Department

Course name

ISSN

0018-9456

Format

Citation

Abstract

This paper addresses the robust estimation of a covariance matrix to express uncertainty when fusing information from multiple sensors. This is a problem of interest in multiple domains and applications, namely, in robotics. This paper discusses the use of estimators using explicit measurements from the sensors involved versus estimators using only covariance estimates from the sensor models and navigation systems. Covariance intersection and a class of orthogonal Gnanadesikan-Kettenring estimators are compared using the 2-norm of the estimates. A Monte Carlo simulation of a typical mapping experiment leads to conclude that covariance estimation systems with a hybrid of the two estimators may yield the best results.

Description

Software Description

Software Language

Github

Keywords

DOI

Rights

Funder/s

Relationships

Relationships

Resources