Extracting Main Center Pattern from Road Networks Using Density-Based Clustering with Fuzzy Neighborhood
Abstract
:1. Introduction
2. Related Works
- The index-based method defines the city center by a simple or comprehensive indicator. For instance, Luscher and Weibel [39] extracted the city center from the topological datasets such as land cover and points of interest (POIs) with defined knowledge by participant experiments. Zhu and Sun [23] considered spatial proximity and attribute similarity in the delineation of city center from commercial land-use data. The index system is constructed according to the data source and the application, which always leads to different understandings of the “city center.”
- The density-based method mainly adopts a smooth density surface and the isolines to outline the center area. Hollenstein and Purves [25] explored the city cores through user-generated content and described the city cores using geo-referenced data with kernel density estimation (KDE). Yu et al. [22] provided a recognition method of a central business district (CBD) using the statistical aggregation of the socio-economic point data within network space. Yang et al. [24] proposed a commercial-intersection KDE, which combines road intersections with KDE to identify CBDs based on POIs. The density-based method is intuitive and the center areas are smooth, but it is difficult to determine the best bandwidth in the applications. Besides, there might be scattered areas due to the slightly higher density values than the threshold.
- The clustering-based method means that the data needs to be clustered first and then the boundary of the clusters is constructed using the convex hull, chi-shape, Delaunay triangle, Voronoi diagram, and so on. Yu et al. [40] analyzed the urban landscape pattern with an object-based method, in which urban objects were clustered by portioning Minimum Spanning Tree and then the clusters were delineated by the convex hull. Sun et al. [27] sought to combine the DBSCAN algorithm and Voronoi diagram to identify multiple city centers and delineate their precise boundaries from location-based social network data. Hu et al. [26] defined urban areas of interest (AOI) as the areas within a city that attract the attention of people, and a combination of DBSCAN and chi-shape was employed to identify AOI from the geo-tagged data. Gao et al. [34] used the same method to define the core regions and concluded that data-synthesis-driven approach has a clear advantage that it can be repeated for a wide field at flexible spatial scales.
3. Methods
3.1. Main Clusters Extraction
3.1.1. Basic Concepts of the DBCFN
3.1.2. Principle of the DBCFN
- Input the parameter MinPts and Eps, and calculate Mf and Cf of the points;
- Calculate parameter ε1 with a certain λ, and search for the core points;
- Search for the largest set of density-connected points with parameter ε2 from a core point;
- Repeat Step 3 until all core points have been visited, and allocate the points that have not been classified into any cluster as noise;
- Merge the clusters that share common points and record m; and
- If m is greater than M, then turn to Step 2 with the parameter λ + 1; else, break.
3.1.3. Parameters Setting
3.1.4. Comparison Analysis
3.2. Main Center Area Delineation
4. Experiments and Analysis
4.1. Case of the Monocentric City
4.2. Case of the Polycentric City
4.3. Comparison
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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City | Method | Number of Polygons | Number of Holes | Boundary Extent |
---|---|---|---|---|
Xi’an | Contrast method | 18 | 0 | Within the city |
Proposed method | 1 | 0 | Within the city | |
Shenzhen | Contrast method | 45 | 2 | Beyond the city |
Proposed method | 3 | 0 | Within the city |
Algorithm | R | P | F1-score |
---|---|---|---|
Contrast method | 0.399 | 0.885 | 0.550 |
Proposed method | 0.698 | 0.947 | 0.804 |
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Cui, X.; Wang, J.; Wu, F.; Li, J.; Gong, X.; Zhao, Y.; Zhu, R. Extracting Main Center Pattern from Road Networks Using Density-Based Clustering with Fuzzy Neighborhood. ISPRS Int. J. Geo-Inf. 2019, 8, 238. https://doi.org/10.3390/ijgi8050238
Cui X, Wang J, Wu F, Li J, Gong X, Zhao Y, Zhu R. Extracting Main Center Pattern from Road Networks Using Density-Based Clustering with Fuzzy Neighborhood. ISPRS International Journal of Geo-Information. 2019; 8(5):238. https://doi.org/10.3390/ijgi8050238
Chicago/Turabian StyleCui, Xiaojie, Jiayao Wang, Fang Wu, Jinghan Li, Xianyong Gong, Yao Zhao, and Ruoxin Zhu. 2019. "Extracting Main Center Pattern from Road Networks Using Density-Based Clustering with Fuzzy Neighborhood" ISPRS International Journal of Geo-Information 8, no. 5: 238. https://doi.org/10.3390/ijgi8050238
APA StyleCui, X., Wang, J., Wu, F., Li, J., Gong, X., Zhao, Y., & Zhu, R. (2019). Extracting Main Center Pattern from Road Networks Using Density-Based Clustering with Fuzzy Neighborhood. ISPRS International Journal of Geo-Information, 8(5), 238. https://doi.org/10.3390/ijgi8050238