Hybrid Dynamic Trees for Extreme-Resolution 3D Sparse Data Modeling

2016 IEEE International Parallel and Distributed Processing Symposium (IPDPS)(2016)

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摘要
This paper presents the hybrid dynamic tree (HDT), a novel adaptive tree-based data structure for representing high-resolution sparse volumes. Roughly speaking, HDTs combine dense volumetric grids with sparse octrees in a way that makes them both more compact and better-suited to GPUs than state-of-the-art alternatives. For our motivating applications in computer-aided design and manufacturing(CAD/CAM), we show 2× reductions in storage on realistic inputs compared to these alternatives, additionally, we show up to 16 fix speedups over multicore CPU implementations on a specific computational bottleneck known as an offset surface computation. Indeed, these combined improvements allow us to perform offsetting on a single node at resolutions well beyond that of the prior work and the capabilities of current commercial packages. And beyond CAD/CAM, HDTs may find applications in 3D geometric modeling problems for a variety of domains, including medical imaging and graphics.
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关键词
Volumetric representation,Octrees,GPGPU acceleration,Convolution filters,Computer-aided design and manufacturing
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