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Cooperative, distributed localization in multi-robot systems: a minimum-entropy approach

Vincenzo Caglioti, A. Citterio, Andrea Fossati

发表年份
2006
引用次数
35

摘要

In this paper, we consider the problem of localization in a multi-robot system. We present a new approach focused on distribution, scalability, and minimum-uncertainty perception. An Extended Kalman Filter (EKF) is used to update an estimate of the robot poses in correspondence to each sensor measurement. An entropic criterion is used, in order to select optimal measurements that reduce the global uncertainty relative to the estimate of the robot poses. It is shown that, in addition to EKF, also the selection of the optimal measurement can be distributed among the robots, in a scalable fashion. The proposed approach has been validated by simulations and preliminary experimental results.

关键词

RobotExtended Kalman filterScalabilityComputer scienceKalman filterEntropy (arrow of time)Monte Carlo localizationArtificial intelligenceMobile robotControl theory (sociology)

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