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Sampling-Based Path Planning in Highly Dynamic and Crowded Pedestrian Flow

Kuanqi Cai, Weinan Chen, Daniel Dugas, Roland Siegwart, Jen Jen Chung

2023IEEE Transactions on Intelligent Transportation Systems14 citationsDOI

Abstract

Autonomous pedestrian-aware navigation in shared human-robot environments is a challenging problem. Here we consider a common situation in which a large crowd of pedestrians moves together in a limited space. Traditional planners struggle to find collision-free paths in such situations since the free space is limited and always changing. To solve this problem, we proposed a flow map-based RRT* method (FM-RRT*) containing a velocity layer and a minimally-intrusive layer. The proposed method models the velocity of the pedestrian flow and the area where the robot is less invasive to pedestrians. Furthermore, we propose an adaptive bias sampling, which drives the robot considering relative velocity, or minimal intrusion, according to the pedestrian flow. The evaluation is conducted in the Crowdbot Challenge simulator. The results show that our method can find a feasible path considering collision risk while simultaneously avoiding intrusive human movement.

Topics & Concepts

PedestrianRobotMotion planningComputer scienceCollision avoidanceCollisionSampling (signal processing)Path (computing)SimulationArtificial intelligenceComputer visionFree spaceReal-time computingEngineeringTransport engineeringComputer securityComputer networkFilter (signal processing)OpticsPhysicsEvacuation and Crowd DynamicsRobotic Path Planning AlgorithmsAutonomous Vehicle Technology and Safety
Sampling-Based Path Planning in Highly Dynamic and Crowded Pedestrian Flow | Litcius