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An Equivariant Observer Design for Visual Localisation and Mapping

2019-04-04
Pieter van Goor, Robert Mahony, Tarek Hamel, Jochen Trumpf

Abstract

This paper builds on recent work on Simultaneous Localisation and Mapping (SLAM) in the non-linear observer community, by framing the visual localisation and mapping problem as a continuous-time equivariant observer design problem on the symmetry group of a kinematic system. The state-space is a quotient of the robot pose expressed on SE(3) and multiple copies of real projective space, used to represent both points in space and bearings in a single unified framework. An observer with decoupled Riccati-gains for each landmark is derived and we show that its error system is almost globally asymptotically stable and exponentially stable in-the-large.

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URL

http://arxiv.org/abs/1904.02452

PDF

http://arxiv.org/pdf/1904.02452


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