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引用次数: 4

摘要

我们介绍了点云数据库的概念,这是一种主要针对科学应用的新型数据库系统。许多科学观察、实验、特征提取算法和大规模模拟产生了大量的数据,这些数据在k维(k > 10)度量空间中更好地表示为稀疏(但通常是高度聚集的)点,而不是在多维网格中。降维技术,如主成分,也被广泛用于将高维数据投影到类似的低维空间中。为处理多维数据点而开发的分析技术通常是作为内存算法实现的,需要进行修改才能在分布式集群环境和大量磁盘驻留数据中工作。我们得出的结论是,关系模型加上某些附加功能,适用于点云,但是点云数据库还必须提供一组独特的空间搜索和邻近连接操作符、索引方案和查询语言结构,使它们成为独特的数据库系统。
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Point cloud databases
We introduce the concept of the point cloud database, a new kind of database system aimed primarily towards scientific applications. Many scientific observations, experiments, feature extraction algorithms and large-scale simulations produce enormous amounts of data that are better represented as sparse (but often highly-clustered) points in a k-dimensional (k ≲ 10) metric space than on a multi-dimensional grid. Dimensionality reduction techniques, such as principal components, are also widely-used to project high dimensional data into similarly low dimensional spaces. Analysis techniques developed to work on multi-dimensional data points are usually implemented as in-memory algorithms and need to be modified to work in distributed cluster environments and on large amounts of disk-resident data. We conclude that the relational model, with certain additions, is appropriate for point clouds, but point cloud databases must also provide unique set of spatial search and proximity join operators, indexing schemes, and query language constructs that make them a distinct class of database systems.
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