Efficient Probabilistic Collision Detection for Non-Convex Shapes

2017 IEEE International Conference on Robotics and Automation (ICRA)(2016)

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摘要
We present new algorithms to perform fast probabilistic collision queries between convex as well as non-convex objects. Our approach is applicable to general shapes, where one or more objects are represented using Gaussian probability distributions. We present a fast new algorithm for a pair of convex objects, and extend the approach to non-convex models using hierarchical representations. We highlight the performance of our algorithms with various convex and non-convex shapes on complex synthetic benchmarks and trajectory planning benchmarks for a 7-DOF Fetch robot arm.
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关键词
probabilistic collision detection,nonconvex shapes,probabilistic collision queries,nonconvex objects,object representation,Gaussian probability distributions,hierarchical representations,trajectory planning,7-DOF fetch robot arm
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