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SIMDop: SIMD optimized Bounding Volume Hierarchies for Collision Detection

机译:SIMDOP:SIMD优化的碰撞检测限定卷层次结构

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We present a novel data structure for SIMD optimized simultaneous bounding volume hierarchy (BVH) traversals like they appear for instance in collision detection tasks. In contrast to all previous approaches, we consider both the traversal algorithm and the construction of the BVH. The main idea is to increase the branching factor of the BVH according to the available SIMD registers and parallelize the simultaneous BVH traversal using SIMD operations. This requires a novel BVH construction method because traditional BVHs for collision detection usually are simple binary trees. To do that, we present a new BVH construction method based on a clustering algorithm, Batch Neural Gas, that is able to build efficient n-ary tree structures along with SIMD optimized simultaneous BVH traversal. Our results show that our new data structure outperforms binary trees significantly.
机译:我们为SIMD提供了一种新的数据结构,用于SIMD优化的同步边界卷层次结构(BVH)遍历,如它们在碰撞检测任务中出现。与所有先前的方法相比,我们考虑遍历算法和BVH的构造。主要思想是根据可用的SIMD寄存器增加BVH的分支因子,并通过SIMD操作并行化同时BVH遍历。这需要一种新的BVH施工方法,因为用于碰撞检测的传统BVHS通常是简单的二元树。为此,我们提出了一种基于聚类算法,批量神经气体的新的BVH施工方法,能够与SIMD优化同步BVH遍历建立高效的N-ary树结构。我们的结果表明,我们的新数据结构显着优于二元树。

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