Spatial approximations have been traditionally used in spatial databases to accelerate the processing of complex geometric operations. However, approximations are typically only used in a first filtering step to determine a set of candidate spatial objects that may fulfill the query condition. To provide accurate results, the exact geometries of the candidate objects are tested against the query condition, which is typically an expensive operation. Nevertheless, many emerging applications (e.g., visualization tools) require interactive responses, while only needing approximate results. Besides, real-world geospatial data is inherently imprecise, which makes exact data processing unnecessary. Given the uncertainty associated with spatial data and the relaxed precision requirements of many applications, this vision paper advocates for approximate spatial data processing techniques that omit exact geometric tests and provide final answers solely on the basis of (fine-grained) approximations. Thanks to recent hardware advances, this vision can be realized today. Furthermore, our approximate techniques employ a distance-based error bound, i.e., a bound on the maximum spatial distance between false (or missing) and exact results which is crucial for meaningful analyses. This bound allows to control the precision of the approximation and trade accuracy for performance.
翻译:空间数据库历来使用空间近似值来加快复杂几何操作的处理,但近近似值通常只在确定一组可能满足查询条件的候选空间物体的最初过滤步骤中使用。为了提供准确的结果,根据查询条件对候选物体的精确地差进行测试,而查询条件通常是昂贵的操作。然而,许多新出现的应用(例如可视化工具)需要互动反应,而只需要大约的结果。此外,真实世界的地理空间数据本质上不够精确,使得精确的数据处理变得没有必要。鉴于空间数据的不确定性和许多应用的宽松精确要求,本视觉文件主张使用大约的空间数据处理技术,这些技术可以省略精确的几何测试,并且仅根据(精度)近似近似和交易准确性性能的精确度提供最后答案。由于最近的硬件进步,这一视觉今天可以实现。此外,我们的近似技术使用基于距离的误差,即将误差与误差(或缺失)和精确的结果捆绑在一起,这对于有意义的分析至关重要。这把近似近似准确性的精确度和贸易准确性精确性加以控制。