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首页> 外文期刊>The International journal of robotics research >GPU-based parallel collision detection for fast motion planning
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GPU-based parallel collision detection for fast motion planning

机译:基于GPU的并行碰撞检测用于快速运动计划

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摘要

We present parallel algorithms to accelerate collision queries for sample-based motion planning. Our approach is designed for current many-core GPUs and exploits data-parallelism and multi-threaded capabilities. In order to take advantage of the high number of cores, we present a clustering scheme and collision-packet traversal to perform efficient collision queries on multiple configurations simultaneously. Furthermore, we present a hierarchical traversal scheme that performs workload balancing for high parallel efficiency. We have implemented our algorithms on commodity NVIDIA GPUs using CUDA and can perform 500,000 collision queries per second with our benchmarks, which is 10 times faster than prior GPU-based techniques. Moreover, we can compute collision-free paths for rigid and articulated models in less than 100 msfor many benchmarks, almost 50—100 times faster than current CPU-based PRM planners.
机译:我们提出了并行算法来加速基于样本的运动计划的碰撞查询。我们的方法是为当前的多核GPU设计的,并利用了数据并行性和多线程功能。为了利用大量内核,我们提出了一种群集方案和冲突数据包遍历,以同时对多个配置执行有效的冲突查询。此外,我们提出了一种分层遍历方案,该方案执行工作负载平衡以实现高并行效率。我们已经使用CUDA在商品NVIDIA GPU上实现了算法,并且使用我们的基准测试可以每秒执行500,000次碰撞查询,这比以前基于GPU的技术快10倍。此外,对于许多基准,我们可以在不到100毫秒的时间内为刚性和铰接模型计算无冲突路径,几乎是当前基于CPU的PRM规划器的50-100倍。

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