Title :
Vehicle localization by using a multi-modality top down approach
Author :
Aynaud, Claude ; Bernay-Angeletti, Coralie ; Chapuis, Roland ; Auirere, Romuald ; Debain, Christophe
Author_Institution :
Inst. Pascal, Aubiere, France
Abstract :
In this paper1, a localization system for a mobile robot is proposed, using a top-down multi-sensorial approach and exploiting a map of the environment. Generally, the data sensors are associated with the map by a classical map-matching process. Because of the embedded sensors, the field of view is limited, there is a risk of false association between map and the sensor data. Popular methods try to optimize a global cost, to track multi-hypothesis or reduce the problem by using multi-sensor. These approaches are bottom-up: each sensor data is analysed even if it is not relevant (like a GPS in indoor environment). The proposed approach is based on a classical EKF combined with a Bayesian network is used to select the best feature to detect in the map with the best sensor. This selection is done by taking into account actual localization and the objectives of precision and integrity of the robot localization. Presented results show a real-time application of this method with a robot embedding several laser range-finders and a low-cost GPS. Both simulation and real data results are presented.
Keywords :
Global Positioning System; SLAM (robots); belief networks; feature selection; intelligent sensors; laser ranging; mobile robots; sensor fusion; Bayesian network; GPS; Global Positioning System; classical EKF; classical map-matching process; data sensors; embedded sensors; extended Kalman filter; feature selection; global cost optimization; laser range-finders; mobile robot; multihypothesis tracking; multimodality top down approach; robot localization integrity; robot localization precision; top-down multisensorial approach; vehicle localization; Bayes methods; Detectors; Global Positioning System; Robot sensing systems; Vehicles;
Conference_Titel :
Control Automation Robotics & Vision (ICARCV), 2014 13th International Conference on
DOI :
10.1109/ICARCV.2014.7064523