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Enhanced robot obstacle avoidance strategy: efficient distance estimation and collision avoidance for hidden robots

Xiaojun Zhang, Minglong Li, Jidong Jia, Lingyu Sun, Manhong Li, Minglu Zhang

Year
2024
Citations
2
Access
Open access

Abstract

Abstract Human-robot interaction is crucial for the future of smart factories and new industrial systems. Safety in robotics has always been a top priority, with external sensors being studied to construct safety perception systems for robots. This paper proposes an obstacle avoidance strategy based on an efficient distance estimation method using a vision sensor to address the challenge of robot occlusion. The method fuses depth images with a predefined robot skeleton model to estimate robot pose in real time, and uses the optimized potential field model to achieve full-body collision avoidance. Comparative experiments validate the efficiency of the proposed method, which represents a significant contribution to enhancing human–robot interaction and safety in industrial settings.

Keywords

Collision avoidanceRobotObstacle avoidanceComputer scienceArtificial intelligenceObstacleRoboticsComputer visionMobile robotSimulation

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