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Mapping Passenger Trajectories to Train Schedules - industrial paper

Published: 22 November 2024 Publication History

Abstract

An important task in transportation studies is to accurately map a given set of trajectories representing moving individuals onto specific means of transportation, like trains or buses. In this paper, we consider the following problem: given a trajectory representing train stations visited by a passenger during a trip and a train schedule, extract the set of trains that have been taken by the individual during the trip. Specifically, we introduce a novel algorithm based on a Generalized Suffix Tree (GST) to efficiently link passenger trajectories to train schedules, addressing challenges like large data volumes and noisy input trajectories. Our method constructs a GST from train schedules and allows for integrating multiple schedules into a single searchable structure, enabling rapid and precise matching of trajectories to train routes. Although we use trains as an example, the approach can be used for other means like buses or trams. To analyze our solution, we construct a synthetic dataset of passenger trajectories built over the Italian train schedule; the dataset contains trajectories with and without transfers and with noise both in timestamps and station identifiers. The experimental analysis shows that our solution perfectly reconstructs noiseless trajectories even with transfers, and achieves an accuracy of at least 86% with noisy data.

References

[1]
Gyözö Gidófalvi Adrian C. Prelipcean and Yusak O. Susilo. 2017. Transportation mode detection - an in-depth review of applicability and reliability. Transport Reviews 37, 4 (2017), 442--464.
[2]
Bieganski, Riedl, Cartis, and Retzel. 1994. Generalized suffix trees for biological sequence data: applications and implementation. In Proc. 27th Hawaii International Conference on System Sciences (HICS), Vol. 5. IEEE Computer Society, 35--44.
[3]
Ana Fernández Vilas, Rebeca P. Díaz Redondo, and Mohamed Ben Khalifa. 2019. Analysis of crowds' movement using Twitter. Computational Intelligence 35, 2 (2019), 448--472.
[4]
Dan Gusfield. 1997. Algorithms on strings, trees, and sequences: computer science and computational biology. Cambridge University Press, USA.
[5]
Christopher Horn and Roman Kern. 2015. Deriving Public Transportation Timetables with Large-Scale Cell Phone Data. Procedia Computer Science 52 (2015), 67--74.
[6]
Satoshi Hyuga, Masaki Ito, Masayuki Iwai, and Kaoru Sezaki. 2016. An online localization method for a subway train utilizing the barometer on a smartphone. In Proc. 24th ACM International Conference on Advances in Geographic Information Systems (SIGSPATIAL). ACM, 50:1--50:4.
[7]
Guanyao Li, Chun-Jie Chen, Sheng-Yun Huang, Ai-Jou Chou, Xiaochuan Gou, Wen-Chih Peng, and Chih-Wei Yi. 2017. Public Transportation Mode Detection from Cellular Data. In Proc. ACM on Conference on Information and Knowledge Management (CIKM). ACM, 2499--2502.
[8]
Neerja Mhaskar and William F. Smyth. 2022. String Covering: A Survey. Fundamenta Informaticae 190 (2022), 17--45.
[9]
Philippe Nitsche, Peter Widhalm, Simon Breuss, Norbert Brändle, and Peter Maurer. 2014. Supporting large-scale travel surveys with smartphones - A practical approach. Transportation Research Part C: Emerging Technologies 43 (2014), 212--221.
[10]
Italian State Railways. 2024. Methodological aspects for passenger mobility analysis using big data. https://www.fsitaliane.it/content/fsitaliane/en/fs-research-centre/studies-and-research.html
[11]
Antonio Scalzo and Claudio Mangione. 2024. Trains and Italian Railways: train schedules, station services, and other railway-related information. https://www.e656.net/. Accessed: 2024-05-30.
[12]
Ainhoa Serna, Jon Kepa Gerrikagoitia, Unai Bernabé, and Tomás Ruiz. 2017. Sustainability analysis on Urban Mobility based on Social Media content. Transportation Research Procedia 24 (2017), 1--8.
[13]
TomTom. 2024. Milan Traffic Report. https://www.tomtom.com/traffic-index/milan-traffic/ Accessed: 2024-06-07.
[14]
Anette Østbø Sorensen, Johannes Bjelland, Heidi Bull-Berg, Andreas Dypvik Landmark, Muhammad Mohsin Akhtar, and Nils O.E. Olsson. 2018. Use of mobile phone data for analysis of number of train travellers. Journal of Rail Transport Planning Management 8, 2 (2018), 123--144.

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cover image ACM Conferences
SIGSPATIAL '24: Proceedings of the 32nd ACM International Conference on Advances in Geographic Information Systems
October 2024
743 pages
This work is licensed under a Creative Commons Attribution-ShareAlike International 4.0 License.

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Association for Computing Machinery

New York, NY, United States

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Published: 22 November 2024

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Author Tags

  1. Suffix tree
  2. mobility data
  3. train-passenger match

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SIGSPATIAL '24
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SIGSPATIAL '24 Paper Acceptance Rate 37 of 122 submissions, 30%;
Overall Acceptance Rate 257 of 1,238 submissions, 21%

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