1999
DOI: 10.1177/02783649922066484
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Adaptive Mobile Robot Navigation and Mapping

Abstract: The task of building a map of an unknown environment and concurrently using that map to navigate is a central problem in mobile robotics research. This paper addresses the problem of how to perform concurrent mapping and localization (CML) adaptively using sonar. Stochastic mapping is a feature-based approach to CML that generalizes the extended Kalman filter to incorporate vehicle localization and environmental mapping. The authors describe an implementation of stochastic mapping that uses a delayed nearest n… Show more

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Cited by 285 publications
(158 citation statements)
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References 25 publications
(31 reference statements)
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“…Although active localization [6] and simultaneous localization and mapping (SLAM) [5] bear some similarity to IPP, they are in fact different, because IPP assumes that the robot location is fully observable. Reducing active localization or SLAM to IPP incurs significant representational and computational cost.…”
Section: Related Workmentioning
confidence: 99%
“…Although active localization [6] and simultaneous localization and mapping (SLAM) [5] bear some similarity to IPP, they are in fact different, because IPP assumes that the robot location is fully observable. Reducing active localization or SLAM to IPP incurs significant representational and computational cost.…”
Section: Related Workmentioning
confidence: 99%
“…The classical target tracking literature provides a number of methods for data-association (Bar-Shalom & Fortmann, 1988;Popoli & Blackman, 1999) that are used in computer vision (Cox, 1993) and CML (Cox & Leonard, 1994;Feder, Leonard, & Smith, 1999), such as the track splitting filter (Zhang & Faugeras, 1992), the Joint Probabilistic Data Association Filter (JPDAF) (Rasmussen & Hager, 1998), and the multiple hypothesis tracker (MHT) (Reid, 1979;Cox & Leonard, 1994;Cox & Hingorani, 1994). Unfortunately the latter, more powerful methods have exponential complexity so suboptimal approximations are used in practice.…”
Section: Related Workmentioning
confidence: 99%
“…For instance, the frontier-based exploration of Yamauchi (1997), where the border lines between unknown and known regions, called frontiers, drives the robot behavior through a depth-first search. The Fisher information on the measurement and navigational uncertainties can also be used as heuristic functions (Feder et al, 1999). In this case the robot prefers actions that maximize its information gain in Fisher's sense.…”
Section: Introductionmentioning
confidence: 99%