3DPro: Querying Complex Three-Dimensional Data with Progressive Compression and Refinement.

Dejun Teng, Yanhui Liang, Furqan Baig, Jun Kong, Vo Hoang, Fusheng Wang
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Abstract

Large-scale three-dimensional spatial data has gained increasing attention with the development of self-driving, mineral exploration, CAD, and human atlases. Such 3D objects are often represented with a polygonal model at high resolution to preserve accuracy. This poses major challenges for 3D data management and spatial queries due to the massive amounts of 3D objects, e.g., trillions of 3D cells, and the high complexity of 3D geometric computation. Traditional spatial querying methods in the Filter-Refine paradigm have a major focus on indexing-based filtering using approximations like minimal bounding boxes and largely neglect the heavy computation in the refinement step at the intra-geometry level, which often dominates the cost of query processing. In this paper, we introduce 3DPro, a system that supports efficient spatial queries for complex 3D objects. 3DPro uses progressive compression of 3D objects preserving multiple levels of details, which significantly reduces the size of the objects and has the data fit into memory. Through a novel Filter-Progressive-Refine paradigm, 3DPro can have query results returned early whenever possible to minimize decompression and geometric computations of 3D objects in higher resolution representations. Our experiments demonstrate that 3DPro out-performs the state-of-the-art 3D data processing techniques by up to an order of magnitude for typical spatial queries.

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3DPro:利用渐进压缩和细化功能查询复杂的三维数据
随着自动驾驶、矿产勘探、计算机辅助设计和人类地图集的发展,大规模三维空间数据越来越受到关注。这些三维物体通常采用高分辨率的多边形模型来表示,以保持精度。这给三维数据管理和空间查询带来了重大挑战,因为三维物体的数量巨大,例如数万亿个三维单元,而且三维几何计算非常复杂。传统的 "过滤-细化 "空间查询方法主要侧重于使用最小边界框等近似值进行基于索引的过滤,在很大程度上忽略了细化步骤中几何内部级别的繁重计算,而这往往是查询处理的主要成本。本文介绍的 3DPro 是一个支持复杂三维物体高效空间查询的系统。3DPro 对三维物体采用渐进式压缩,保留了多层次的细节,从而大大减小了物体的大小,并使数据适合内存。通过新颖的 "过滤-渐进-重定义 "模式,3DPro 可以尽可能早地返回查询结果,从而最大限度地减少三维物体在更高分辨率表示法中的解压缩和几何计算。我们的实验证明,对于典型的空间查询,3DPro 的性能比最先进的三维数据处理技术高出一个数量级。
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