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UPDATING GEOSPATIAL DATA FROM LARGE SCALE DATA SOURCES

机译:从大规模数据源更新地理空间数据

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In the past decades, many geospatial databases have been established at national, regional and municipal levels over the world. Nowadays, it has been widely recognized that how to update these established geo-spatial database and keep them up to date is most critical for the value of geo-spatial database. So, more and more efforts have been devoted to the continuous updating of these geospatial databases. Currently, there exist two main types of methods for Geo-spatial database updating: directly updating with remote sensing images or field surveying materials, and indirectly updating with other updated data result such as larger scale newly updated data. The former method is the basis because the update data sources in the two methods finally root from field surveying and remote sensing. The later method is often more economical and faster than the former. Therefore, after the larger scale database is updated, the smaller scale database should be updated correspondingly in order to keep the consistency of multi-scale geo-spatial database. In this situation, it is very reasonable to apply map generalization technology into the process of geo-spatial database updating. The latter is recognized as one of most promising methods of geo-spatial database updating, especially in collaborative updating environment in terms of map scale, i.e , different scale database are produced and maintained separately by different level organizations such as in China. This paper is focused on applying digital map generalization into the updating of geo-spatial database from large scale in the collaborative updating environment for SDI. The requirements of the application of map generalization into spatial database updating are analyzed firstly. A brief review on geospatial data updating based digital map generalization is then given. Based on the requirements analysis and review, we analyze the key factors for implementing updating geospatial data from large scale including technical and non-technical factors, followed by the general strategy of digital map generalization in practical production environment. In fact the most important factor is recognized that it is very difficult to establish generalization rules for production systems. We emphasized on this factor in our work and established a set of rules or constrains for scale topographical database updating 1:50000 scaled data from 1:10000 scaled data in a full digital environment mainly based on map specifications. Finally, We discussed the generic system structure and give an example of production system used in the project of 1:50000 scaled database updating in China.
机译:在过去的几十年中,许多地理空间数据库已经在全国,地区和市政层面建立。如今,已被广泛认识到,如何更新这些已建立的地理空间数据库,并将其保持最新对于地球空间数据库的值最为关键。因此,越来越多地致力于持续更新这些地理空间数据库。目前,存在两种主要类型的地理空间数据库类型的方法:直接使用遥感图像或现场测量材料进行更新,并间接更新其他更新的数据结果,例如更大的新更新的数据。前一种方法是基础,因为两种方法中的更新数据源最终从现场测量和遥感中丢弃。后来的方法往往比前者更经济,更快。因此,在更新较大的尺度数据库之后,应相应地更新较小的刻度数据库以保持多尺度地理空间数据库的一致性。在这种情况下,将地图泛化技术应用于地理空间数据库更新过程是非常合理的。后者被认定为地质空间数据库更新的最有希望的方法之一,特别是在地图刻度方面,即,由中国等不同级别的组织分开产生和维护不同的比例数据库。本文专注于将数字地图概括应用于从大规模在SDI的协作更新环境中从大规模应用到地理空间数据库的更新中。首先分析将MAP概括应用到空间数据库更新中的要求。然后给出了基于地理空间数据更新的基于地理空间数据更新的简要述评。根据需求分析和审查,我们分析了实施从大规模更新的地理空间数据的关键因素,包括技术和非技术因素,然后是实际生产环境中的数字地图概括的一般策略。事实上,最重要的因素被认识到,建立生产系统的泛化规则是非常困难的。我们强调了我们工作中的这个因素,并建立了一组规则或规模地形数据库的约束,从1:10000缩放数据中的全数字环境中的1:10000缩放数据,主要基于地图规范。最后,我们讨论了通用系统结构,并举例说明在中国1:50000缩放数据库更新的项目中使用的生产系统。

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