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首页> 外文期刊>International Journal of Geographical Information Science >Utilising urban context recognition and machine learning to improve the generalisation of buildings
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Utilising urban context recognition and machine learning to improve the generalisation of buildings

机译:利用城市环境识别和机器学习来改善建筑物的通用性

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摘要

The introduction of automated generalisation procedures in map production systems requires that generalisation systems are capable of processing large amounts of map data in acceptable time and that cartographic quality is similar to traditional map products. With respect to these requirements, we examine two complementary approaches that should improve generalisation systems currently in use by national topographic mapping agencies. Our focus is particularly on self-evaluating systems, taking as an example those systems that build on the multi-agent paradigm. The first approach aims to improve the cartographic quality by utilising cartographic expert knowledge relating to spatial context. More specifically, we introduce expert rules for the selection of generalisation operations based on a classification of buildings into five urban structure types, including inner city, urban, suburban, rural, and industrial and commercial areas. The second approach aims to utilise machine learning techniques to extract heuristics that allow us to reduce the search space and hence the time in which a good cartographical solution is reached. Both approaches are tested individually and in combination for the generalisation of buildings from map scale 1:5000 to the target map scale of 1:25 000. Our experiments show improvements in terms of efficiency and effectiveness. We provide evidence that both approaches complement each other and that a combination of expert and machine learnt rules give better results than the individual approaches. Both approaches are sufficiently general to be applicable to other forms of self-evaluating, constraint-based systems than multi-agent systems, and to other feature classes than buildings. Problems have been identified resulting from difficulties to formalise cartographic quality by means of constraints for the control of the generalisation process.
机译:在地图生成系统中引入自动归纳程序要求归纳系统能够在可接受的时间内处理大量地图数据,并且制图质量类似于传统地图产品。关于这些要求,我们研究了两种互补的方法,这些方法应改进国家地形图绘制机构当前使用的概括系统。我们的重点特别放在自我评估系统上,以建立在多主体范例之上的系统为例。第一种方法旨在通过利用与空间背景有关的制图专家知识来提高制图质量。更具体地说,我们根据建筑物分为五种城市结构类型(包括内城区,城市,郊区,农村以及工业和商业区)的分类,介绍了选择一般化操作的专家规则。第二种方法旨在利用机器学习技术来提取启发式方法,从而使我们能够减少搜索空间,从而减少达到良好制图解决方案的时间。分别对两种方法进行了测试,并进行了组合测试,以对从1:5000的地图比例到1:25 000的目标地图比例尺的建筑物进行泛化。我们提供的证据表明,这两种方法相辅相成,并且专家和机器学习规则的组合比单独的方法提供了更好的结果。两种方法都具有足够的通用性,可适用于除多主体系统以外的其他形式的自我评估,基于约束的系统,以及适用于建筑物以外的其他要素类。已经确定了由于难以控制归纳过程而使制图质量正规化所导致的问题。

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