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Trajectory clustering for motion prediction

Cynthia Sung, Dan Feldman, Daniela Rus

Year
2012
Citations
70

Abstract

We investigate a data-driven approach to robotic path planning and analyze its performance in the context of interception tasks. Trajectories of moving objects often contain repeated patterns of motion, and learning those patterns can yield interception paths that succeed more often. We therefore propose an original trajectory clustering algorithm for extracting motion patterns from trajectory data and demonstrate its effectiveness over the more common clustering approach of using k-means. We use the results to build a Hidden Markov Model of a target's motion and predict movement. Our simulations show that these predictions lead to more effective interception. The results of this work have potential applications in coordination of multi-robot systems, tracking and surveillance tasks, and dynamic obstacle avoidance.

Keywords

TrajectoryComputer scienceCluster analysisArtificial intelligenceContext (archaeology)InterceptionMotion (physics)Motion planningRobotHidden Markov model

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