Defining the Boundaries of Urban Built-up Area Based on Taxi Trajectories: a Case Study of Beijing

Yuanfu Li1, Sun Qun1, Xiaolin Ji1, Li Xu1, Chuanwei Lu1, Yunpeng Zhao1
1Information Engineering University, Zhengzhou, China

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