Loading [MathJax]/extensions/MathMenu.js
A Multi-Scale Attributes Attention Model for Transport Mode Identification | IEEE Journals & Magazine | IEEE Xplore

A Multi-Scale Attributes Attention Model for Transport Mode Identification


Abstract:

Transport mode identification (TMI), which infers the travel modes of user trajectories, is essential to facilitate an understanding of urban mobility patterns and passen...Show More

Abstract:

Transport mode identification (TMI), which infers the travel modes of user trajectories, is essential to facilitate an understanding of urban mobility patterns and passengers’ choice behaviors with the goal of improving urban transportation systems. To achieve higher accuracy, existing TMI methods usually rely on mobility features obtained from densely sampled GPS trajectory points (e.g. 1 second per GPS point) or data measurements of additional inertial measurement unit (IMU) sensors (e.g. accelerometer, gyroscope, rotation vector). However, these lead to high energy consumption of the users’ mobile devices. In this paper, we propose a novel deep learning framework, Multi-Scale Attributes Attention (MSAA) model, to extract discriminating trajectory features from GPS data only, without the need to increase its sampling rate. The proposed model first partitions the trajectories into different scales and extract the latent representation of local attributes at each scale. The MSAA model relies on Convolutional Neural Network (CNN) to capture the spatial correlation of different trajectory segments, and utilizes attention mechanism to select the most suitable local attributes on the different trajectory scales that can effectively characterize the various transport modes. Since the learned latent local attributes are significantly different from the global features (e.g. average/min/max travel speeds which are measurable quantities), an ensemble model based on Neural Decision Forest (NDF) is employed to fuse the heterogeneous features consisting of both measurable quantities and non-measurable elements for determining the transport mode. Experiments on real-world datasets demonstrate the competitive performance of the proposed approach compared to several state-of-the-art baselines, with average improvements in accuracy ranging from 0.76% to 6.4%. In addition, the proposed multi-scale local attributes well complement the global features. Our results show that by incorp...
Published in: IEEE Transactions on Intelligent Transportation Systems ( Volume: 23, Issue: 1, January 2022)
Page(s): 152 - 164
Date of Publication: 22 July 2020

ISSN Information:

Funding Agency:

References is not available for this document.

I. Introduction

Transport mode identification (TMI) aims to infer the users’ transport modes, e.g. walking, running, bicycling, driving a car, taking a bus or taxi, from a given trajectory data. The inferred transport modes serve as important information for monitoring and understanding travel behavior [1], [2], which is critical in the planning, design, and management of the transportation system. For example, the ability to extract precise user travel characteristics from their transport modes can alleviate congestion problems through travel demand estimation, travel route planning and recommendation.

Select All
1.
P. A. Gonzalez, J. S. Weinstein, S. J. Barbeau, M. A. Labrador, P. L. Winters, N. L. Georggi, et al., "Automating mode detection for travel behaviour analysis by using global positioning systems-enabled mobile phones and neural networks", IET Intell. Transp. Syst., vol. 4, no. 1, pp. 37-49, 2010.
2.
H. Mäenpää, A. Lobov and J. L. M. Lastra, "Travel mode estimation for multi-modal journey planner", Transp. Res. C Emerg. Technol., vol. 82, pp. 273-289, Sep. 2017.
3.
B. Wang, L. Gao and Z. Juan, "Travel mode detection using GPS data and socioeconomic attributes based on a random forest classifier", IEEE Trans. Intell. Transport. Syst., vol. 19, no. 5, pp. 1547-1558, May 2018.
4.
Y. Zheng, L. Liu, L. Wang and X. Xie, "Learning transportation mode from raw GPS data for geographic applications on the Web", Proc. 17th Int. Conf. World Wide Web (WWW), pp. 247-256, 2008.
5.
L. Wu, B. Yang and P. Jing, "Travel mode detection based on GPS raw data collected by smartphones: A systematic review of the existing methodologies", Information, vol. 7, no. 4, pp. 67, Nov. 2016.
6.
H. R. Eftekhari and M. Ghatee, "An inference engine for smartphones to preprocess data and detect stationary and transportation modes", Transp. Res. C Emerg. Technol., vol. 69, pp. 313-327, Aug. 2016.
7.
C. A. M. S. De Quintella, L. C. V. Andrade and C. A. V. Campos, "Detecting the transportation mode for context-aware systems using smartphones", Proc. IEEE 19th Int. Conf. Intell. Transp. Syst. (ITSC), pp. 2261-2266, Nov. 2016.
8.
H. I. Ashqar, M. H. Almannaa, M. Elhenawy, H. A. Rakha and L. House, "Smartphone transportation mode recognition using a hierarchical machine learning classifier and pooled features from time and frequency domains", IEEE Trans. Intell. Transport. Syst., vol. 20, no. 1, pp. 244-252, Jan. 2019.
9.
P. R. Stopher, "Use of an activity-based diary to collect household travel data", Transportation, vol. 19, no. 2, pp. 159-176, May 1992.
10.
L. Gong, T. Morikawa, T. Yamamoto and H. Sato, "Deriving personal trip data from GPS data: A literature review on the existing methodologies", Proc. Social Behav. Sci., vol. 138, pp. 557-565, Jul. 2014.
11.
P. McGowen and M. McNally, "Evaluating the potential to predict activity types from GPS and GIS data", Proc. 86th Annu. Meeting Transp. Res. Board, pp. 1-22, 2007.
12.
T. K. Rasmussen, J. B. Ingvardson, K. Halldórsdóttir and O. A. Nielsen, "Improved methods to deduct trip legs and mode from travel surveys using wearable GPS devices: A case study from the greater copenhagen area", Comput. Environ. Urban Syst., vol. 54, pp. 301-313, Nov. 2015.
13.
T. M. Mitchell, "Mining our reality", Science, vol. 326, no. 5960, pp. 1644-1645, Dec. 2009.
14.
S.-H. Fang, Y.-X. Fei, Z. Xu and Y. Tsao, "Learning transportation modes from smartphone sensors based on deep neural network", IEEE Sensors J., vol. 17, no. 18, pp. 6111-6118, Sep. 2017.
15.
Y. Qin, H. Luo, F. Zhao, C. Wang, J. Wang and Y. Zhang, "Toward transportation mode recognition using deep convolutional and long short-term memory recurrent neural networks", IEEE Access, vol. 7, pp. 142353-142367, 2019.
16.
X. Su, H. Caceres, H. Tong and Q. He, "Online travel mode identification using smartphones with battery saving considerations", IEEE Trans. Intell. Transport. Syst., vol. 17, no. 10, pp. 2921-2934, Oct. 2016.
17.
S. Lee, J. Lee and K. Lee, "VehicleSense: A reliable sound-based transportation mode recognition system for smartphones", Proc. IEEE 18th Int. Symp. World Wireless Mobile Multimedia Netw. (WoWMoM), pp. 1-9, Jun. 2017.
18.
T. Bantis and J. Haworth, "Who you are is how you travel: A framework for transportation mode detection using individual and environmental characteristics", Transp. Res. C Emerg. Technol., vol. 80, pp. 286-309, Jul. 2017.
19.
S. Dabiri, C. Lu, K. Heaslip and C. K. Reddy, "Semi-supervised deep learning approach for transportation mode identification using GPS trajectory data", IEEE Trans. Knowl. Data Eng., vol. 32, no. 5, pp. 1010-1023, May 2020.
20.
S. Dabiri and K. Heaslip, "Inferring transportation modes from GPS trajectories using a convolutional neural network", Transp. Res. C Emerg. Technol., vol. 86, pp. 360-371, Jan. 2018.
21.
L. Wang, H. Gjoreski, M. Ciliberto, S. Mekki, S. Valentin and D. Roggen, "Enabling reproducible research in sensor-based transportation mode recognition with the Sussex-Huawei dataset", IEEE Access, vol. 7, pp. 10870-10891, 2019.
22.
M.-C. Yu, T. Yu, S.-C. Wang, C.-J. Lin and E. Y. Chang, "Big data small footprint: The design of a low-power classifier for detecting transportation modes", Proc. VLDB Endowment, vol. 7, no. 13, pp. 1429-1440, Aug. 2014.
23.
E. F. de S. Soares, C. A. V. Campos and S. C. de Lucena, "Online travel mode detection method using automated machine learning and feature engineering", Future Gener. Comput. Syst., vol. 101, pp. 1201-1212, Dec. 2019.
24.
A. Yazdizadeh, Z. Patterson and B. Farooq, "Ensemble convolutional neural networks for mode inference in smartphone travel survey", IEEE Trans. Intell. Transport. Syst., vol. 21, no. 6, pp. 2232-2239, Jun. 2020.
25.
G. Xiao, Q. Cheng and C. Zhang, "Detecting travel modes from smartphone-based travel surveys with continuous hidden Markov models", Int. J. Distrib. Sens. Netw., vol. 15, no. 4, 2019.
26.
A. Jahangiri and H. A. Rakha, "Applying machine learning techniques to transportation mode recognition using mobile phone sensor data", IEEE Trans. Intell. Transport. Syst., vol. 16, no. 5, pp. 2406-2417, Oct. 2015.
27.
H. Gong, C. Chen, E. Bialostozky and C. T. Lawson, "A GPS/GIS method for travel mode detection in new york city", Comput. Environ. Urban Syst., vol. 36, no. 2, pp. 131-139, Mar. 2012.
28.
C. Chen, H. Gong, C. Lawson and E. Bialostozky, "Evaluating the feasibility of a passive travel survey collection in a complex urban environment: Lessons learned from the New York City case study", Transp. Res. A Policy Pract., vol. 44, no. 10, pp. 830-840, Dec. 2010.
29.
L. Stenneth, O. Wolfson, P. S. Yu and B. Xu, "Transportation mode detection using mobile phones and GIS information", Proc. 19th ACM SIGSPATIAL Int. Conf. Adv. Geographic Inf. Syst. (GIS), pp. 54-63, 2011.
30.
D. Bachir, G. Khodabandelou, V. Gauthier, M. El Yacoubi and E. Vachon, "Combining Bayesian inference and clustering for transport mode detection from sparse and noisy geolocation data", Proc. Mach. Learn. Knowl. Discov. Databases Euro. Conf. (ECML-PKDD), pp. 247-264, Sep. 2018.
Contact IEEE to Subscribe

References

References is not available for this document.