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Feature-constrained Active Visual SLAM for Mobile Robot Navigation

Xinke Deng, Zixu Zhang, Avishai Sintov, Jing Huang, Timothy Bretl

Year
2018
Citations
46

Abstract

This paper focuses on tracking failure avoidance during vision-based navigation to a desired goal in unknown environments. While using feature-based Visual Simultaneous Localization and Mapping (VSLAM), continuous identification and association of map points are required during motion. Thus, we discuss a motion planning framework that takes into account sensory constraints for a reliable navigation. We use information available in the SLAM and propose a data-driven approach to predict the number of map points associated in a given pose. Then, a distance-optimal path planner utilizes the model to constrain paths such that the number of associated map points in each pose is above a threshold. We also include an online mapping of the environment for collision avoidance. Overall, we propose an iterative motion planning framework that enables real-time replanning after the acquisition of more information. Experiments in two environments demonstrate the performance of the proposed framework.

Keywords

Computer visionSimultaneous localization and mappingComputer scienceArtificial intelligenceMotion planningMobile robotFeature (linguistics)Collision avoidanceMotion (physics)Planner

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