Conte, Dean Edward2021-03-032021-03-032021-03-02vt_gsexam:29295http://hdl.handle.net/10919/102581This thesis presents a framework for a mobile robot to escort a human to their destination successfully and efficiently. The proposed technique uses accurate path prediction incorporating human intention to locate the robot in front of the human while walking. Human intention is inferred by the head pose, an effective past-proven implicit indicator of intention, and fused with conventional physics-based motion prediction. The human trajectory is estimated and predicted using a particle filter because of the human's nonlinear and non-Gaussian behavior, and the robot control action is determined from the predicted human pose allowing for anticipative autonomous escorting. Experimental analysis shows that the incorporation of the proposed human intention model reduces human position prediction error by approximately 35% when turning. Furthermore, experimental validation with an omnidirectional mobile robotic platform shows escorting up to 50% more accurate compared to the conventional techniques, while achieving 97% success rate.ETDIn CopyrightIntention recognitionautonomous agentshuman trackinghuman robot interactionparticle filterAutonomous Robotic Escort Incorporating Motion Prediction with Human IntentionThesis