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Probabilistic double guarantee kidnapping detection in SLAM

Yang Tian, Shugen Ma

Year
2016
Citations
3
Access
Open access

Abstract

For determining whether kidnapping has happened and which type of kidnapping it is while a robot performs autonomous tasks in an unknown environment, a double guarantee kidnapping detection (DGKD) method has been proposed. The good performance of DGKD in a relative small environment is shown. However, a limitation of DGKD is found in a large-scale environment by our recent work. In order to increase the adaptability of DGKD in a large-scale environment, an improved method called probabilistic double guarantee kidnapping detection is proposed in this paper to combine probability of features' positions and the robot's posture. Simulation results demonstrate the validity and accuracy of the proposed method.

Keywords

Probabilistic logicAdaptabilityComputer scienceScale (ratio)RobotArtificial intelligenceComputer vision

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