Publication | Open Access
Kinodynamic motion planning on Gaussian mixture fields
35
Citations
19
References
2017
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningField RoboticsIntelligent RoboticsComputational MechanicsTrajectory PlanningData ScienceRobot LearningKinematicsMobile Robot MotionComputational GeometryRobotics PerceptionHealth SciencesPath PlanningRobot Motion PlanningGaussian Mixture FieldsMotion SynthesisComputer ScienceComputer VisionMotion PlanningPath LengthRobotics
We present a mobile robot motion planning approach under kinodynamic constraints that exploits learned perception priors in the form of continuous Gaussian mixture fields. Our Gaussian mixture fields are statistical multi-modal motion models of discrete objects or continuous media in the environment that encode e.g. the dynamics of air or pedestrian flows. We approach this task using a recently proposed circular linear flow field map based on semi-wrapped GMMs whose mixture components guide sampling and rewiring in an RRT* algorithm using a steer function for non-holonomic mobile robots. In our experiments with three alternative baselines, we show that this combination allows the planner to very efficiently generate high-quality solutions in terms of path smoothness, path length as well as natural yet minimum control effort motions through multi-modal representations of Gaussian mixture fields.
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