Enhanced PCA-based localization using depth maps with missing data


Autoria(s): Carreira, Fernando; Calado, João Manuel Ferreira; Cardeira, Carlos; Oliveira, Paulo
Data(s)

08/03/2016

08/03/2016

01/02/2015

Resumo

In this paper a new method for self-localization of mobile robots, based on a PCA positioning sensor to operate in unstructured environments, is proposed and experimentally validated. The proposed PCA extension is able to perform the eigenvectors computation from a set of signals corrupted by missing data. The sensor package considered in this work contains a 2D depth sensor pointed upwards to the ceiling, providing depth images with missing data. The positioning sensor obtained is then integrated in a Linear Parameter Varying mobile robot model to obtain a self-localization system, based on linear Kalman filters, with globally stable position error estimates. A study consisting in adding synthetic random corrupted data to the captured depth images revealed that this extended PCA technique is able to reconstruct the signals, with improved accuracy. The self-localization system obtained is assessed in unstructured environments and the methodologies are validated even in the case of varying illumination conditions.

Identificador

CARREIRA, Fernando; [et al.] - Enhanced PCA-based localization using depth maps with missing data. Journal of Intelligent & Robotics Systems. ISSN. 0921-0296. Vol. 77, Nr. 2, SI, (2015), 341-360

0921-0296

1573-0409

http://hdl.handle.net/10400.21/5809

10.1007/s10846-013-0013-6

Idioma(s)

eng

Publicador

Springer

Relação

SI;

http://link.springer.com/article/10.1007%2Fs10846-013-0013-6

Direitos

closedAccess

Palavras-Chave #Mobile robots #Robot sensing systems #Sensor fusion #Principal component analysis #Kalman filters
Tipo

article