Anomalous Urban Mobility Pattern Detection Based on GPS Trajectories and POI Data

Anomalous urban mobility pattern refers to abnormal human mobility flow in a city. Anomalous urban mobility pattern detection is important in the study of urban mobility. In this paper, a framework is proposed to identify anomalous urban mobility patterns based on taxi GPS trajectories and Point of Interest (POI) data. In the framework, functional regions are first generated based on the distribution of POIs by the DBSCAN clustering algorithm. A Weighted Term Frequency-Inverse Document Frequency (WTF-IDF) method is proposed to identify function values in each region. Then, the Origin-Destination (OD) of trips between functional regions is extracted from GPS trajectories to detect anomalous urban mobility patterns. Mobility vectors are established for each time interval based on the OD of trips and are classified into clusters by the mean shift algorithm. Abnormal urban mobility patterns are identified by processing the mobility vectors. A case study in the city of Wuhan, China, is conducted; the experimental results show that the proposed method can effectively identify daily and hourly anomalous urban mobility patterns.

[1]  Gerard Salton,et al.  Term-Weighting Approaches in Automatic Text Retrieval , 1988, Inf. Process. Manag..

[2]  Yu-Ru Lin,et al.  Anomaly detection in spatiotemporal data via regularized non-negative tensor analysis , 2018, Data Mining and Knowledge Discovery.

[3]  Rafael E. Banchs,et al.  Article in Press Pervasive and Mobile Computing ( ) – Pervasive and Mobile Computing Urban Cycles and Mobility Patterns: Exploring and Predicting Trends in a Bicycle-based Public Transport System , 2022 .

[4]  Xin Wang,et al.  Personalized travel route recommendation using collaborative filtering based on GPS trajectories , 2018, Int. J. Digit. Earth.

[5]  Francesco Marcelloni,et al.  Detection of traffic congestion and incidents from GPS trace analysis , 2017, Expert Syst. Appl..

[6]  L. Qingquan,et al.  Exploring the distribution and dynamics of functional regions using mobile phone data and social media data , 2015 .

[7]  Shi An,et al.  Detecting Traffic Anomalies in Urban Areas Using Taxi GPS Data , 2015 .

[8]  Pengfei Wang,et al.  Human Mobility Synchronization and Trip Purpose Detection with Mixture of Hawkes Processes , 2017, KDD.

[9]  Fahui Wang,et al.  Urban land uses and traffic 'source-sink areas': Evidence from GPS-enabled taxi data in Shanghai , 2012 .

[10]  Gang Pan,et al.  Mining the semantics of origin-destination flows using taxi traces , 2012, UbiComp '12.

[11]  Ge Cui,et al.  Profitable Taxi Travel Route Recommendation Based on Big Taxi Trajectory Data , 2020, IEEE Transactions on Intelligent Transportation Systems.

[12]  João Gama,et al.  Event detection from traffic tensors: A hybrid model , 2016, Neurocomputing.

[13]  Daqing Zhang,et al.  Measuring social functions of city regions from large-scale taxi behaviors , 2011, 2011 IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOM Workshops).

[14]  Yandong Wang,et al.  Using Spatial Semantics and Interactions to Identify Urban Functional Regions , 2018, ISPRS Int. J. Geo Inf..

[15]  Alexis J. Comber,et al.  Who, Where, Why and When? Using Smart Card and Social Media Data to Understand Urban Mobility , 2019, ISPRS Int. J. Geo Inf..

[16]  Yang Yue,et al.  Measurements of POI-based mixed use and their relationships with neighbourhood vibrancy , 2017, Int. J. Geogr. Inf. Sci..

[17]  Krzysztof Janowicz,et al.  Extracting urban functional regions from points of interest and human activities on location‐based social networks , 2017, Trans. GIS.

[18]  Lei Shi,et al.  STenSr: Spatio-temporal tensor streams for anomaly detection and pattern discovery , 2015, Knowledge and Information Systems.

[19]  Pietro Liò,et al.  Collective Human Mobility Pattern from Taxi Trips in Urban Area , 2012, PloS one.

[20]  Xing Xie,et al.  Discovering regions of different functions in a city using human mobility and POIs , 2012, KDD.

[21]  Hui Xiong,et al.  Discovering Urban Functional Zones Using Latent Activity Trajectories , 2015, IEEE Transactions on Knowledge and Data Engineering.

[22]  Xintao Liu,et al.  Uncovering Spatio-Temporal Cluster Patterns Using Massive Floating Car Data , 2013, ISPRS Int. J. Geo Inf..

[23]  Dorin Comaniciu,et al.  Mean Shift: A Robust Approach Toward Feature Space Analysis , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[24]  Gaël Varoquaux,et al.  Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..

[25]  Hong Huang,et al.  Revealing Spatial-Temporal Characteristics and Patterns of Urban Travel: A Large-Scale Analysis and Visualization Study with Taxi GPS Data , 2019, ISPRS Int. J. Geo Inf..

[26]  Hans-Peter Kriegel,et al.  A Density-Based Algorithm for Discovering Clusters in Large Spatial Databases with Noise , 1996, KDD.