Using artificial neural network for labelling polygon features in topographic maps

IF 0.7 Q3 GEOGRAPHY
GeoScape Pub Date : 2019-12-01 DOI:10.2478/geosc-2019-0012
K. Pokonieczny, Sylwia Borkowska
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引用次数: 8

Abstract

Abstract The purpose of this article was to present the methodology which enables automatic map labelling. This topic is particularly important in the context of the ongoing research into the full automation of visualization process of spatial data stored in the currently used topographic databases (e.g. OpenStreetMap, Vector Map Level 2, etc.). To carry out this task, the artificial neural network (multilayer perceptron) was used. The Vector Map Level 2 was used as a test database. The data for neural network learning (the reference label localization) was obtained from the military topographic map at scale 1 : 50 000. In the article, the method of applying artificial neural networks to the map labelling is presented. Detailed research was carried out on the basis of labels from the feature class “built-up area”. The results of the analyses revealed that it is possible to use the artificial intelligence computational methods to automate the process of placing labels on maps. The results showed that 65% of the labels were put on the topographic map in the same place as in the case of the labelling which was done manually by a cartographer. The obtained results can contribute both to the enhancement of the quality of cartographic visualization (e.g. in geoportals) and the partial elimination of the human factor in this process. Highlights for public administration, management and planning: • Map label placement is among key variables ensuring the usability of topographic maps across disciplines. • We present the neural network approach for automating the process of labelling topographic maps with locality names. • The presented case study applies to the military map in scale 1:50 000, but can be applied on other maps and geoportals.
基于人工神经网络的地形图多边形特征标注
摘要本文的目的是提出一种实现地图自动标注的方法。在当前使用的地形数据库(如OpenStreetMap、Vector Map Level 2等)中存储的空间数据的可视化过程的完全自动化研究中,这一主题尤为重要。为了执行这一任务,使用了人工神经网络(多层感知器)。矢量图级别2被用作测试数据库。用于神经网络学习(参考标签定位)的数据是从比例为1:50000的军事地形图中获得的。本文介绍了将人工神经网络应用于地图标注的方法。在“建成区”特征类别标签的基础上进行了详细研究。分析结果表明,使用人工智能计算方法可以自动在地图上放置标签。结果显示,65%的标签被放在地形图上的同一位置,与制图师手动标记的情况相同。所获得的结果既有助于提高制图可视化的质量(例如在地理门户中),也有助于部分消除这一过程中的人为因素。公共行政、管理和规划的亮点:•地图标签的放置是确保各专业地形图可用性的关键变量之一。•我们提出了一种神经网络方法,用于自动化用地名标记地形图的过程。•所提出的案例研究适用于比例尺为1:50000的军事地图,但也可以应用于其他地图和地理门户网站。
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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来源期刊
GeoScape
GeoScape GEOGRAPHY-
CiteScore
2.70
自引率
7.70%
发文量
7
审稿时长
4 weeks
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