Home /Research /ClearPath
OTHER

ClearPath

Stephen J. Guy, Jatin Chhugani, Changkyu Kim, Nadathur Satish, Ming C. Lin, Dinesh Manocha, Pradeep Dubey

Year
2009
Citations
291

Abstract

We present a new local collision avoidance algorithm between multiple agents for real-time simulations. Our approach extends the notion of velocity obstacles from robotics and formulates the conditions for collision free navigation as a quadratic optimization problem. We use a discrete optimization method to efficiently compute the motion of each agent. This resulting algorithm can be parallelized by exploiting data-parallelism and thread-level parallelism. The overall approach, ClearPath, is general and can robustly handle dense scenarios with tens or hundreds of thousands of heterogeneous agents in a few milli-seconds. As compared to prior collision avoidance algorithms, we observe more than an order of magnitude performance improvement.

Keywords

Computer scienceCollision avoidanceThread (computing)CollisionParallelism (grammar)Parallel computingQuadratic programmingAlgorithmRoboticsArtificial intelligence

Related papers

Browse all OTHER papers