CrowdTracker: Optimized Urban Moving Object Tracking Using Mobile Crowd Sensing

Yao Jing, Bin Guo, Zhu Wang, Victor O.K. Li, Jacqueline C.K. Lam, Zhiwen Yu

Research output: Contribution to journalArticlepeer-review

56 Scopus citations

Abstract

This paper proposes CrowdTracker, a novel object tracking system based on mobile crowd sensing (MCS). Different from traditional video-based object tracking approaches, CrowdTracker recruits people to collaboratively take photographs of the object to achieve object movement prediction and tracking. The optimization objective of CrowdTracker is to effectively track the moving object in real time and minimize the cost on user incentives. Specifically, the incentive is determined by the number of workers assigned and the total distance that workers move to complete the task. In order to achieve the objective, we propose the movement prediction (MPRE) model for object movement prediction and two other algorithms for task allocation, namely, T-centric and P-centric. T-centric selects workers in a task-centric way, while P-centric allocates tasks in a people-centric manner. By analyzing a large number of historical vehicle trajectories, MPRE builds a model to predict the object's next position. In the predicted regions, CrowdTracker selects workers by utilizing T-centric or P-centric. We evaluate the algorithms over a large-scale real-world dataset. Experimental results indicate that CrowdTracker can effectively track the object with a low incentive cost.

Original languageEnglish
Article number8064634
Pages (from-to)3452-3463
Number of pages12
JournalIEEE Internet of Things Journal
Volume5
Issue number5
DOIs
StatePublished - Oct 2018

Keywords

  • Mobile crowd sensing (MCS)
  • object movement prediction
  • object tracking
  • photograph taking
  • task allocation

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