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Building maps for autonomous navigation using sparse visual SLAM features

Yonggen Ling, Shaojie Shen

Year
2017
Citations
26

Abstract

Autonomous navigation, which consists of a systematic integration of localization, mapping, motion planning and control, is the core capability of mobile robotic systems. However, most research considers only isolated technical modules. There exist significant gaps between maps generated by SLAM algorithms and maps required for motion planning. This paper presents a complete online system that consists in three modules: incremental SLAM, real-time dense mapping, and free space extraction. The obtained free-space volume (i.e. a tessellation of tetrahedra) can be served as regular geometric constraints for motion planning. Our system runs in real-time thanks to the engineering decisions proposed to increase the system efficiency. We conduct extensive experiments on the KITTI dataset to demonstrate the run-time performance. Qualitative and quantitative results on mapping accuracy are also shown. For the benefit of the community, we make the source code public.

Keywords

Computer scienceSimultaneous localization and mappingMotion planningComputer visionArtificial intelligenceCode (set theory)Motion (physics)Mobile robotVolume (thermodynamics)Robot

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