Home /Research /Stereo parallel tracking and mapping for robot localization
PERCEPTION

Stereo parallel tracking and mapping for robot localization

Taihú Pire, Thomas Fischer, Javier Civera, Pablo De Cristóforis, Julio Jacobo Berllés

Year
2015
Citations
118

Abstract

This paper describes a visual SLAM system based on stereo cameras and focused on real-time localization for mobile robots. To achieve this, it heavily exploits the parallel nature of the SLAM problem, separating the time-constrained pose estimation from less pressing matters such as map building and refinement tasks. On the other hand, the stereo setting allows to reconstruct a metric 3D map for each frame of stereo images, improving the accuracy of the mapping process with respect to monocular SLAM and avoiding the well-known bootstrapping problem. Also, the real scale of the environment is an essential feature for robots which have to interact with their surrounding workspace. A series of experiments, on-line on a robot as well as off-line with public datasets, are performed to validate the accuracy and real-time performance of the developed method.

Keywords

Computer visionArtificial intelligenceComputer scienceSimultaneous localization and mappingRobotStereo camerasMobile robotMetric (unit)Feature (linguistics)Monocular

Related papers

Browse all PERCEPTION papers