Spatial join for high-resolution objects

H. Kriegel, Peter Kunath, M. Pfeifle, M. Renz
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引用次数: 4

Abstract

Modern database applications including computer-aided design (CAD), medical imaging, molecular biology, or multimedia information systems impose new requirements on efficient spatial query processing. One of the most common query types in spatial database management systems is the spatial join. In this paper, we investigate spatial join processing for two sets of very complex spatial objects. We present an approach that is based on a fast filter step performing the spatial join on simple primitives which conservatively approximate the objects. Our main attention is focused on the problem how to generate approximations adequate for high-resolution objects. In this paper, we introduce gray approximations as a general concept which helps to range between replicating and nonreplicating object approximations. The key idea of our approach is to build these replications based on statistical information taking the data distribution of the respective join-partner relation into account. Furthermore, our approach uses compression techniques for the effective storage and retrieval of the decomposed spatial objects. We demonstrate the benefits of our new method for the spatial intersection join on high resolution data. The experimental evaluation on real-world test data points out that our new concept accelerates the spatial intersection join considerably.
高分辨率对象的空间连接
计算机辅助设计(CAD)、医学成像、分子生物学或多媒体信息系统等现代数据库应用对高效的空间查询处理提出了新的要求。空间数据库管理系统中最常见的查询类型之一是空间连接。本文研究了两组非常复杂的空间对象的空间连接处理。我们提出了一种基于快速过滤步骤对简单原语执行空间连接的方法,该方法保守地近似于对象。我们的主要注意力集中在如何生成适合高分辨率物体的近似问题上。在本文中,我们引入灰色近似作为一个通用的概念,它有助于在复制和非复制对象近似之间的范围。我们方法的关键思想是基于统计信息构建这些复制,并考虑到各自联合伙伴关系的数据分布。此外,我们的方法使用压缩技术来有效地存储和检索分解的空间对象。在高分辨率数据的空间交叉连接中,我们展示了新方法的优点。对实际测试数据的实验评价表明,我们的新概念大大加快了空间交叉连接的速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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