Home /Research /Cooperative multi-robot localization under communication constraints
SWARM

Cooperative multi-robot localization under communication constraints

Nikolas Trawny, Stergios I. Roumeliotis, Georgios B. Giannakis

Year
2009
Citations
78

Abstract

This paper addresses the problem of cooperative localization (CL) under severe communication constraints. Specifically, we present minimum mean square error (MMSE) and maximum a posteriori (MAP) estimators that can process measurements quantized with as little as one bit per measurement. During CL, each robot quantizes and broadcasts its measurements and receives the quantized observations of its teammates. The quantization process is based on the appropriate selection of thresholds, computed using the current state estimates, that minimize the estimation error metric considered. Extensive simulations demonstrate that the proposed Iteratively-Quantized Extended Kalman filter (IQEKF) and the Iteratively Quantized MAP (IQMAP) estimator achieve performance indistinguishable of that of their real-valued counterparts (EKF and MAP, respectively) when using as few as 4 bits for quantizing each robot measurement.

Keywords

Maximum a posteriori estimationEstimatorQuantization (signal processing)RobotMinimum mean square errorExtended Kalman filterKalman filterComputer scienceMetric (unit)A priori and a posteriori

Related papers

Browse all SWARM papers