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Collision Prediction: Conservative Advancement Among Obstacles With Unknown Motion
Author(s) -
Yanyan Lu,
Zhonghua Xi,
JyhMing Lien
Publication year - 2014
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1115/detc2014-35561
Subject(s) - collision , obstacle , computer science , motion (physics) , motion planning , collision detection , robot , collision avoidance , trajectory , path (computing) , artificial intelligence , rotation (mathematics) , computer vision , simulation , computer security , physics , astronomy , programming language , political science , law
Collision detection is a fundamental geometric tool for sampling-based motion planners. On the contrary, collision prediction for the scenarios that obstacle’s motion is unknown is still in its infancy. This paper proposes a new approach to predict collision by assuming that obstacles are adversarial. Our new tool advances collision prediction beyond the translational and disc robots; arbitrary polygons with rotation can be used to better represent obstacles and provide tighter bound on predicted collision time. Comparing to an online motion planner that replans periodically at fixed time interval, our experimental results provide strong evidences that our method significantly reduces the number of re-plannings while maintaining higher success rate of finding a valid path.Copyright © 2014 by ASME

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