
测绘学报 ›› 2020, Vol. 49 ›› Issue (2): 245-255.doi: 10.11947/j.AGCS.2020.20190280
安晓亚1,2, 成晓强3
收稿日期:2019-07-01
修回日期:2019-10-18
发布日期:2020-03-03
通讯作者:
成晓强
E-mail:carto@hubu.edu.cn
作者简介:安晓亚(1982-),男,副研究员,主要从事地图学与地理信息系统方面研究。E-mail:xya2001@tom.com
基金资助:AN Xiaoya1,2, CHENG Xiaoqiang3
Received:2019-07-01
Revised:2019-10-18
Published:2020-03-03
Supported by:摘要: 互联网用户参与的地图制图容易出现视觉冲突、压盖、拥挤等地图表达问题,需要引入地图自动综合协助解决。网络地图中由于原图比例尺和综合后比例尺均难以准确量化,常规地图自动综合基于"原图比例尺-综合后比例尺"判断是否需要综合的方法已不再适用。矢量数据在可视化后会产生视觉粘连,视觉粘连越明显,地图表达效果越差,综合的需求也越强烈。基于此规律,本文提出对视觉粘连进行定量描述并据此判断是否需要综合。首先,从人类视觉感受出发,结合栅格化思想设计了矢量曲线视觉粘连的量化指标——视觉清晰度。然后,基于"金字塔式"的尺度空间计算曲线在多个比例尺表达的清晰度,并拟合了清晰度的变化函数。最后,将该函数应用于众源地理数据的网络地图综合决策。试验结果表明,本文方法可准确判断每条矢量曲线是否需要综合,能有效解决地理数据尺度异质性带来的可视化难题。同时,清晰度变化函数将曲线的尺度描述由静态数值扩展到连续函数,有望更好地支持多尺度空间数据处理及网络地图综合等问题。
中图分类号:
安晓亚, 成晓强. 矢量曲线的视觉清晰度及在网络地图综合中的应用[J]. 测绘学报, 2020, 49(2): 245-255.
AN Xiaoya, CHENG Xiaoqiang. Visual clarity of vector curve and its application in web map generalization[J]. Acta Geodaetica et Cartographica Sinica, 2020, 49(2): 245-255.
| [1] TOUYA G, HOARAU C, CHRISTOPHE S. Clutter and map legibility in automated cartography:a research agenda[J]. Cartographica:The International Journal for Geographic Information and Geovisualization, 2016, 51(4):198-207. [2] HARRIE L, MUSTIōRE S, STIGMAR H. Cartographic quality issues for view services in Geoportals[J]. Cartographica:The International Journal for Geographic Information and Geovisualization, 2011, 46(2):92-100. [3] 艾廷华, 郭宝辰, 黄亚峰. 1:5万地图数据库的计算机综合缩编[J]. 武汉大学学报(信息科学版), 2005, 30(4):297-300. AI Tinghua, GUO Baochen, HUANG Yafeng. Construction of 1:50000 map database by computer generalization method[J]. Geomatics and Information Science of Wuhan University, 2005, 30(4):297-300. [4] RAPOSO P. Scale and generalization[M]//WILSON J P. The Geographic Information Science & Technology Body of Knowledge. US:UCGIS, 2017. [5] 杨敏, 艾廷华, 卢威, 等. 自发地理信息兴趣点数据在线综合与多尺度可视化方法[J]. 测绘学报, 2015, 44(2):228-234. DOI:10.11947/j.AGCS.2015.20130564. YANG Min, AI Tinghua, LU Wei, et al. A real-time generalization and multi-scale visualization method for POI data in volunteered geographic information[J]. Acta Geodaetica et Cartographica Sinica, 2015, 44(2):228-234. DOI:10.11947/j.AGCS.2015.20130564. [6] BEREUTER P, WEIBEL R. Real-time generalization of point data in mobile and web mapping using quadtrees[J]. Cartography and Geographic Information Science, 2013, 40(4):271-281. [7] 武芳, 巩现勇, 杜佳威. 地图制图综合回顾与前望[J]. 测绘学报, 2017, 46(10):1645-1664. DOI:10.11947/j.AGCS.2017.20170287. WU Fang, GONG Xianyong, DU Jiawei. Overview of the research progress in automated map generalization[J]. Acta Geodaetica et Cartographica Sinica, 2017, 46(10):1645-1664. DOI:10.11947/j.AGCS.2017.20170287. [8] REICHENBACHER T. Mobile usage and adaptive visualization[M]//SHEKHAR S, XIONG H. Encyclopedia of GIS. Boston:Springer, 2008:677-682. [9] TOUYA G, BRANDO-ESCOBAR C. Detecting Level-of-Detail Inconsistencies in Volunteered Geographic Information Data Sets[J]. Cartographica:the International Journal for Geographic Information and Geovisualization, 2013, 48(2):134-143. [10] SESTER M, JOKAR ARSANJANI J, KLAMMER R, et al. Integrating and generalising volunteered geographic information[M]//BURGHARDT D, DUCHêNE C, MACKANESS W. Abstracting Geographic Information in a Data Rich World:Methodologies and Applications of Map Generalisation. Cham:Springer, 2014:119-155. [11] STAUFFER A J, WEBINGER S, ROCHE B. Enriching the national map database for multi-scale use:Introducing the visibilityfilter attribution[C]//Proceedings of the 19th International Research Symposium on Computer-Based Cartography. Albuquerque, New Mexico:USGS, 2016. [12] BILJECKI F, LEDOUX H, STOTER J, et al. Formalisation of the level of detail in 3D city modelling[J]. Computers, Environment and Urban Systems, 2014, 48:1-15. [13] TOUYA G, REIMER A. Inferring the scale of OpenStreetMap features[M]//JOKAR ARSANJANI J, ZIPF A, MOONEY P, et al. OpenStreetMap in GIScience:Experiences, Research, and Applications. Cham:Springer, 2015:81-99. [14] SHEA K S, MCMASTER R B. Cartographic generalization in a digital environment:when and how to generalize[C]//Proceedings of the 9th International Symposium on Computer-Assisted Cartography. Baltimore:[s.n.], 1989. [15] MUSTIERE S. Cartographic generalization of roads in a local and adaptive approach:a knowledge acquistion problem[J]. International Journal of Geographical Information Science, 2005, 19(8-9):937-955. [16] SKOPELITI A, TSOULOS L. On the Parametric Description of the Shape of the Cartographic Line[J]. Cartographica:The International Journal for Geographic Information and Geovisualization, 1999, 36(3):53-65. [17] UNI-ZH. Selection of basic measures[R].[S.l.]:AGENT, 2001. [18] LI Zhilin. Algorithmic foundation of multi-scale spatial representation[M]. New York:CRC Press, 2006. [19] FOLEY J D, VAN DAM A, FEINER S K, et al. Introduction to computer graphics[M]. Boston:Addison-Wesley Professional, 1993. [20] OPENSTREETMAP. Slippy map tilenames[EB/OL]. (2017-05-07)[2018-05-30]. http://wiki.openstreetmap.org/wiki/Slippy_map_tilenames#Resolution_and_Scale. [21] MICROSOFT. Bing maps tile system[EB/OL]. (2017-05-30)[2018-05-30]. https://msdn.microsoft.com/en-us/library/bb259689.aspx. [22] 梅洋, 李霖, 贺彪. 基于边界反走样算法的地图可视化研究[J]. 武汉大学学报(信息科学版), 2008, 33(7):759-761. MEI Yang, LI Lin, HE Biao. Cartographic visualization based on boundary anti-aliasing[J]. Geomatics and Information Science of Wuhan University, 2008, 33(7):759-761. [23] OGC. OGC 06-103r4 OpenGIS® implementation standard for geographic information-simple feature access-part 1:common architecture[S]. Wayland:OGC, 2011. [24] HARRIE L, STIGMAR H, DJORDJEVIC M. Analytical estimation of map readability[J]. ISPRS International Journal of Geo-Information, 2015, 4(2):418-446. [25] STOTER J, ZHANG Xiang, STIGMAR H, et al. Evaluation in generalisation[M]//BURGHARDT D, DUCHȆNE C, MACKANESS W. Abstracting Geographic Information in A Data Rich World:Methodologies and Applications of Map Generalisation. Cham:Springer, 2014:259-297. |
| [1] | 吴明光, 成梓铭. 顾及使用场景的绿色地图颜色生成方法研究[J]. 测绘学报, 2026, 55(3): 390-403. |
| [2] | 杨敏, 马宏然, 孔博, 刘鹏程, 艾廷华. 基于预训练模型的矢量海岸线形态模式判别方法[J]. 测绘学报, 2026, 55(3): 404-414. |
| [3] | 禹文豪, 曾子怡, 张一帆, 钱海忠. 融合欧氏空间邻近与拓扑邻接信息预训练模型的路网网格模式[J]. 测绘学报, 2026, 55(3): 415-424. |
| [4] | 禄小敏, 张志义, 闫浩文, 何毅, 苏小宁. 融合深度图信息最大化和多层感知机的建筑物群组模式识别方法[J]. 测绘学报, 2026, 55(3): 425-438. |
| [5] | 成晓强, 赵家威, 刘鹏程. 基于距离-相似性隐喻的空间交互可视化[J]. 测绘学报, 2026, 55(3): 536-547. |
| [6] | 王泽矫, 向隆刚, 王猛, 王兴娟, 刘清. 融合层级特征与多样化注意力的道路面与中心线协同提取网络[J]. 测绘学报, 2026, 55(3): 548-563. |
| [7] | 徐智邦. 实体城市的多层次边界识别、模式分析与扩张模拟[J]. 测绘学报, 2026, 55(3): 566-566. |
| [8] | 冉耘博, 杨雪, 周文豪, 吴承恩, 周宝定, 唐炉亮, 李清泉. 多维偏好增强型对抗深度强化学习驱动的行人路径规划[J]. 测绘学报, 2026, 55(2): 191-205. |
| [9] | 王立增, 程诗奋, 杨一涛, 王培晓, 陆锋. 局部-全局联合感知的时空自适应交通集成预测方法[J]. 测绘学报, 2026, 55(2): 206-221. |
| [10] | 王少华, 梁浩健, 苏澄, 徐大川, 周亮, 秦昆. 耦合时空大数据和人工智能的城市设施配置优化研究进展与展望[J]. 测绘学报, 2026, 55(2): 222-235. |
| [11] | 付晓, 朱司蕊, 厉旭东, 闾国年. 面向长距离通勤场景的城市垂直起降场布局优化方法[J]. 测绘学报, 2026, 55(2): 236-248. |
| [12] | 郭军豪, 吴明治, 王培晓, 张恒才. 一种面向定点稀疏轨迹的密度聚类停留点识别方法[J]. 测绘学报, 2026, 55(2): 249-260. |
| [13] | 李冠男. 道路实景三维模型自动构建方法[J]. 测绘学报, 2026, 55(2): 378-378. |
| [14] | 刘鹏程, 成晓强, 肖天元, 杨敏, 艾廷华. 一种面向地图综合建筑多边形化简的Transformer模型[J]. 测绘学报, 2026, 55(1): 124-137. |
| [15] | 贺彪, 林浩嘉, 郭仁忠, 蒯希, 马丁, 张琛. 基于视觉感知的三维空间相似关系量化计算[J]. 测绘学报, 2026, 55(1): 138-153. |
| 阅读次数 | ||||||
|
全文 |
|
|||||
|
摘要 |
|
|||||