Title of article :
The architecture of a Gaussian mixture Bayes (GMB) robot position estimation system
Author/Authors :
Koshizen، Takamasa نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Pages :
-102
From page :
103
To page :
0
Abstract :
Modelling and reducing uncertainty are two essential problems with mobile robot localisation. In this paper, a new robot position estimator, the Gaussian mixture of Bayes (GMB) which utilises a density estimation technique, is introduced in particular. The proposed system, namely the GMB robot position estimator, which allows a robotʹs position to be modelled as a probability distribution, and uses Bayesʹ theorem to reduce the uncertainty of its location. In addition, we describe, in this paper, how our proposed system is capable of dealing with multiple sensors, as well as a single sensor only. Nevertheless, it is known that such multiple sensors could be used to raise more robust than the single sensor, in terms of obtaining accurate estimate over a robotʹs position. The GMB position estimator mainly consists of four modules such as sonar-based, sensor selection, sensor fusion, and sensor selection improved by combining it with sensor fusion. The proposed system is also illustrated with respect to minimising the uncertainty of a robotʹs position, using the Nomad200 mobile robot shown in Fig. 1. Eventually, it was found that the proposed system was capable of constraining the position error of the robot by the modularity of the system.
Keywords :
Non-stationary time series , Spurious causality , Granger causality
Journal title :
Journal of Systems Architecture
Serial Year :
2001
Journal title :
Journal of Systems Architecture
Record number :
11643
Link To Document :
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