@techreport{yuan2012segmentation, author = {Yuan, Nicholas Jing and Zheng, Yu and Xie, Xing}, title = {Segmentation of Urban Areas Using Road Networks}, year = {2012}, month = {July}, abstract = {Region-based analysis is fundamental and crucial in many geospatial-related applications and research themes, such as trajectory analysis, human mobility study and urban planning. In this paper, we report on an image-processing-based approach to segment urban areas into regions by road networks. Here, each segmented region is bounded by the high-level road segments, covering some neighborhoods and low-level streets. Typically, road segments are classified into different levels (e.g., highways and expressways are usually high-level roads), providing us with a more natural and semantic segmentation of urban spaces than the grid-based partition method. We show that through simple morphological operators, an urban road network can be efficiently segmented into regions. In addition, we present a case study in trajectory mining to demonstrate the usability of the proposed segmentation method. Please cite the following papers when using this segmentation tool: [1] Yu Zheng, Yanchi Liu, Jing Yuan, and Xing Xie. Urban Computing with Taxicabs, ACM Ubicomp, 16 September 2011. [2] Nicholas Jing Yuan, Yu Zheng and Xing Xie, Segmentation of Urban Areas Using Road Networks, MSR-TR-2012-65, 2012.}, publisher = {Microsoft Technical Report}, url = {http://approjects.co.za/?big=en-us/research/publication/segmentation-of-urban-areas-using-road-networks/}, number = {MSR-TR-2012-65}, }