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Transportation Mode Detection Based on Permutation Entropy and Extreme Learning Machine

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  • Lei Zhang
  • LeiJun Liu
  • SuNing Bao
  • MengTing Qiang
  • XiaoMei Zou

Abstract

With the increasing prevalence of GPS devices and mobile phones, transportation mode detection based on GPS data has been a hot topic in GPS trajectory data analysis. Transportation modes such as walking, driving, bus, and taxi denote an important characteristic of the mobile user. Longitude, latitude, speed, acceleration, and direction are usually used as features in transportation mode detection. In this paper, first, we explore the possibility of using Permutation Entropy (PE) of speed, a measure of complexity and uncertainty of GPS trajectory segment, as a feature for transportation mode detection. Second, we employ Extreme Learning Machine (ELM) to distinguish GPS trajectory segments of different transportation. Finally, to evaluate the performance of the proposed method, we make experiments on GeoLife dataset. Experiments results show that we can get more than 50% accuracy when only using PE as a feature to characterize trajectory sequence. PE can indeed be effectively used to detect transportation mode from GPS trajectory. The proposed method has much better accuracy and faster running time than the methods based on the other features and SVM classifier.

Suggested Citation

  • Lei Zhang & LeiJun Liu & SuNing Bao & MengTing Qiang & XiaoMei Zou, 2015. "Transportation Mode Detection Based on Permutation Entropy and Extreme Learning Machine," Mathematical Problems in Engineering, Hindawi, vol. 2015, pages 1-10, December.
  • Handle: RePEc:hin:jnlmpe:940624
    DOI: 10.1155/2015/940624
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