ARTÍCULO
TITULO

Mobility Modes Awareness from Trajectories Based on Clustering and a Convolutional Neural Network

Rui Chen    
Mingjian Chen    
Wanli Li    
Jianguang Wang and Xiang Yao    

Resumen

Massive trajectory data generated by ubiquitous position acquisition technology are valuable for knowledge discovery. The study of trajectory mining that converts knowledge into decision support becomes appealing. Mobility modes awareness is one of the most important aspects of trajectory mining. It contributes to land use planning, intelligent transportation, anomaly events prevention, etc. To achieve better comprehension of mobility modes, we propose a method to integrate the issues of mobility modes discovery and mobility modes identification together. Firstly, route patterns of trajectories were mined based on unsupervised origin and destination (OD) points clustering. After the combination of route patterns and travel activity information, different mobility modes existing in history trajectories were discovered. Then a convolutional neural network (CNN)-based method was proposed to identify the mobility modes of newly emerging trajectories. The labeled history trajectory data were utilized to train the identification model. Moreover, in this approach, we introduced a mobility-based trajectory structure as the input of the identification model. This method was evaluated with a real-world maritime trajectory dataset. The experiment results indicated the excellence of this method. The mobility modes discovered by our method were clearly distinguishable from each other and the identification accuracy was higher compared with other techniques.

 Artículos similares

       
 
Li Geng and Ke Zhang    
Urban planners have been long interested in understanding how urban structure and activities are mutually influenced. Human mobility and economic activities naturally drive the formation of road network structure and the accessibility of the latter shape... ver más

 
Zheyan Chen, Dea van Lierop, Dick Ettema     Pág. 71?93
As a newly emerged bike-sharing system, dockless bike-sharing has the potential to positively influence urban mobility by encouraging active cycling and drawing users from car, public transit and walking. However, scant empirical research explores the ex... ver más

 
Mayara Moraes Monteiro, João de Abreu e Silva, Nuno Afonso, Jesper Bláfoss Ingvardson, Sousa Jorge Pinho de     Pág. 975?994
Temporary opportunities for studying and working abroad have been growing globally and intensifying the movement of highly skilled temporary populations. To attract this group, cities need to address their residential and mobility needs. This study focus... ver más

 
Vitória Albuquerque, Miguel Sales Dias and Fernando Bacao    
Cities are moving towards new mobility strategies to tackle smart cities? challenges such as carbon emission reduction, urban transport multimodality and mitigation of pandemic hazards, emphasising on the implementation of shared modes, such as bike-shar... ver más

 
Kashif Zia, Umar Farooq, Muhammad Shafi and Muhammad Arshad    
The things in the Internet of Things are becoming more and more socially aware. What social means for these things (more often termed as ?social objects?) is predominately determined by how and when objects interact with each other. In this paper, an age... ver más
Revista: IoT