Title of article
Using a LRF sensor in the Kalman-filtering-based localization of a mobile robot
Author/Authors
Teslic، D. نويسنده , , Luka and ?krjanc، نويسنده , , Igor and Klan?ar، نويسنده , , Gregor، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
9
From page
145
To page
153
Abstract
This paper deals with the problem of estimating the output-noise covariance matrix that is involved in the localization of a mobile robot. The extended Kalman filter (EKF) is used to localize the mobile robot with a laser range finder (LRF) sensor in an environment described with line segments. The covariances of the observed environment lines, which compose the output-noise covariance matrix in the correction step of the EKF, are the result of the noise arising from a range-sensor’s (e.g., a LRF) distance and angle measurements. A method for estimating the covariances of the line parameters based on classic least squares (LSQ) is proposed. This method is compared with the method resulting from the orthogonal LSQ in terms of computational complexity. The results of a comparison show that the use of classic LSQ instead of orthogonal LSQ reduce the number of computations in a localization algorithm which is a part of a SLAM (simultaneous localization and mapping) algorithm. Statistical accuracy of both methods is also compared by simulating the LRF’s measurements and the comparison proves the efficiency of the proposed approach.
Keywords
mobile robot , localization , SLAM , Kalman filter , covariance matrix , Least-squares method
Journal title
ISA TRANSACTIONS
Serial Year
2010
Journal title
ISA TRANSACTIONS
Record number
2383014
Link To Document