Stereo Parallel Tracking And Mapping For Robot Localization

2015 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2015)

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摘要
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.
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关键词
bootstrapping problem,mapping process,stereo image processing,mobile robot,stereo camera,visual SLAM system,robot localization,stereo parallel tracking
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