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Visually Mapping the RMS Titanic: Conservative Covariance Estimates for SLAM Information Filters

Ryan M. Eustice, Hanumant Singh, John J. Leonard, Matthew R. Walter

Year
2006
Citations
159

Abstract

This paper describes a vision-based, large-area, simultaneous localization and mapping (SLAM) algorithm that respects the low-overlap imagery constraints typical of underwater vehicles while exploiting the inertial sensor information that is routinely available on such platforms. We present a novel strategy for efficiently accessing and maintaining consistent covariance bounds within a SLAM information filter, thereby greatly increasing the reliability of data association. The technique is based upon solving a sparse system of linear equations coupled with the application of constant-time Kalman updates. The method is shown to produce consistent covariance estimates suitable for robot planning and data association. Real-world results are reported for a vision-based, six degree of freedom SLAM implementation using data from a recent survey of the wreck of the RMS Titanic.

Keywords

Simultaneous localization and mappingCovarianceKalman filterComputer visionData associationComputer scienceArtificial intelligenceExtended Kalman filterRobotInertial measurement unit

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