Better Lost in Transition Than Lost in Space: SLAM State Machine

Mirco Colosi1, Sebastian Haug2, Peter Biber3, Kai Oliver Arras4, Giorgio Grisetti5

  • 1Sapienza, University of Rome
  • 2BOSCH
  • 3Robert Bosch GmbH
  • 4Bosch Research
  • 5Sapienza University of Rome

Details

11:45 - 12:00 | Tue 5 Nov | LG-R10 | TuAT10.4

Session: SLAM I

Abstract

A Simultaneous Localization and Mapping (SLAM) system is a complex program consisting of several interconnected components with different functionalities such as optimization, tracking or loop detection. Whereas the literature addresses in detail how enhancing the algorithmic aspects of the individual components improves SLAM performance, the modal aspects, such as when to localize, relocalize or close a loop, are usually left aside. In this paper, we address the modal aspects of a SLAM system and show that the design of the modal controller has a strong impact on SLAM performance in particular in terms of robustness against unforeseen events such as sensor failures, perceptual aliasing or kidnapping. We preset a novel taxonomy for the components of a modern SLAM system, investigate their interplay and propose a highly modular architecture of a generic SLAM system using the Unified Modeling Language (UML) state machine formalism. The result, called SLAM state machine, is compared to the modal controller of several state-of-the-art SLAM systems and evaluated in two experiments. We demonstrate that our state machine handles unforeseen events much more robustly than the state-of-the-art systems.