Inferring High-Resolutional Urban Flow With Internet Of Mobile Things
Fan Zhou, Xin Jing, Liang Li, Ting Zhong
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Monitoring urban flow timely and accurately is crucial for many industrial applications -- from urban planning to traffic control in the smart cities. This work introduces a new method for inferring fine-grained urban flow with the internet of mobile things such as taxis and bikes. We tackle the problem from a new perspective and present a novel deep learning method UrbanODE (Urban flow inference with Neural Ordinary Differential Equations). Furthermore, UrbanODE provides a flexible balance between flow inference accuracy and computational efficiency, which is important in computation restricted scenarios such as pervasive edge computing. Extensive evaluations on real-world traffic flow data demonstrate the superiority of the proposed method.
Chairs:
John McAllister