805
Views
24
CrossRef citations to date
0
Altmetric
Original Articles

Representation and discovery of building patterns: a three-level relational approach

, &
Pages 1161-1186 | Received 21 Jun 2015, Accepted 12 Oct 2015, Published online: 09 Nov 2015

Keep up to date with the latest research on this topic with citation updates for this article.

Read on this site (12)

Zhiwei Wei, Wenjia Xu, Yi Xiao, Mi Shu, Lu Cheng, Yang Wang & Chunbo Liu. (2023) Enhancing building pattern recognition through multi-scale data and knowledge graph: a case study of C-shaped patterns. International Journal of Digital Earth 16:1, pages 3860-3881.
Read now
Yilang Shen, Jingzhong Li, Ziqi Wang, Rong Zhao & Lu Wang. (2022) A raster-based typification method for multiscale visualization of building features considering distribution patterns. International Journal of Digital Earth 15:1, pages 249-275.
Read now
Zhiwei Wei, Su Ding, Lu Cheng, Wenjia Xu, Yang Wang & Lili Zhang. (2022) Linear building pattern recognition in topographical maps combining convex polygon decomposition. Geocarto International 37:26, pages 11365-11389.
Read now
Ruixing Xing, Fang Wu, Xianyong Gong, Jiawei Du & Chengyi Liu. (2022) An axis-matching approach to combined collinear pattern recognition for urban building groups. Geocarto International 37:16, pages 4823-4842.
Read now
Xiao Wang & Dirk Burghardt. (2021) A typification method for linear building groups based on stroke simplification. Geocarto International 36:15, pages 1732-1751.
Read now
Rong Zhao, Tinghua Ai, Wenhao Yu, Yakun He & Yilang Shen. (2020) Recognition of building group patterns using graph convolutional network. Cartography and Geographic Information Science 47:5, pages 400-417.
Read now
Parastoo Pilehforooshha & Mohammad Karimi. (2020) A local adaptive density-based algorithm for clustering polygonal buildings in urban block polygons. Geocarto International 35:2, pages 141-167.
Read now
Xiao Wang & Dirk Burghardt. (2020) Using stroke and mesh to recognize building group patterns. International Journal of Cartography 6:1, pages 71-98.
Read now
Parastoo Pilehforooshha & Mohammad Karimi. (2019) An integrated framework for linear pattern extraction in the building group generalization process. Geocarto International 34:9, pages 1000-1021.
Read now
Shihong Du, Mi Shu & Qiao Wang. (2019) Modelling relational contexts in GEOBIA framework for improving urban land-cover mapping. GIScience & Remote Sensing 56:2, pages 184-209.
Read now
Zhiwei Wei, Qingsheng Guo, Lin Wang & Fen Yan. (2018) On the spatial distribution of buildings for map generalization. Cartography and Geographic Information Science 45:6, pages 539-555.
Read now
Xianyong Gong & Fang Wu. (2018) A typification method for linear pattern in urban building generalisation. Geocarto International 33:2, pages 189-207.
Read now

Articles from other publishers (12)

Xianjin He, Min Deng & Guowei Luo. (2022) Recognizing Building Group Patterns in Topographic Maps by Integrating Building Functional and Geometric Information. ISPRS International Journal of Geo-Information 11:6, pages 332.
Crossref
Chengming Li, Wei Wu, Yong Yin, Pengda Wu & Zheng Wu. (2021) A multi‐scale partitioning and aggregation method for large volumes of buildings considering road networks association constraints. Transactions in GIS 26:2, pages 779-798.
Crossref
Yilang Shen, Tinghua Ai, Jingzhong Li, Lu Wang & Wende Li. (2020) A tile-map-based method for the typification of artificial polygonal water areas considering the legibility. Computers & Geosciences 143, pages 104552.
Crossref
Xianjin He, Min Deng & Guowei Luo. (2020) Recognizing Linear Building Patterns in Topographic Data by Using Two New Indices based on Delaunay Triangulation. ISPRS International Journal of Geo-Information 9:4, pages 231.
Crossref
Jinyao Lin, Huiyin Wan & Yutong Cui. (2020) Analyzing the spatial factors related to the distributions of building heights in urban areas: A comparative case study in Guangzhou and Shenzhen. Sustainable Cities and Society 52, pages 101854.
Crossref
Weijia Bei, Mingqiang Guo & Ying Huang. (2019) A Spatial Adaptive Algorithm Framework for Building Pattern Recognition Using Graph Convolutional Networks. Sensors 19:24, pages 5518.
Crossref
Xiao Wang & Dirk Burghardt. (2019) A Mesh-Based Typification Method for Building Groups with Grid Patterns. ISPRS International Journal of Geo-Information 8:4, pages 168.
Crossref
Xiongfeng Yan, Tinghua Ai, Min Yang & Hongmei Yin. (2019) A graph convolutional neural network for classification of building patterns using spatial vector data. ISPRS Journal of Photogrammetry and Remote Sensing 150, pages 259-273.
Crossref
Xianjin He, Xinchang Zhang & Qinchuan Xin. (2018) Recognition of building group patterns in topographic maps based on graph partitioning and random forest. ISPRS Journal of Photogrammetry and Remote Sensing 136, pages 26-40.
Crossref
Zhiwei Wei, Jie He, Lin Wang, Yong Wang & Qingsheng Guo. (2018) A Collaborative Displacement Approach for Spatial Conflicts in Urban Building Map Generalization. IEEE Access 6, pages 26918-26929.
Crossref
Xiongfeng Yan, Tinghua Ai & Xiang Zhang. (2017) Template Matching and Simplification Method for Building Features Based on Shape Cognition. ISPRS International Journal of Geo-Information 6:8, pages 250.
Crossref
Shihong Du, Liqun Luo, Kai Cao & Mi Shu. (2016) Extracting building patterns with multilevel graph partition and building grouping. ISPRS Journal of Photogrammetry and Remote Sensing 122, pages 81-96.
Crossref

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.