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Inferring transportation mode from smartphone sensors: Evaluating the potential of Wi-Fi and Bluetooth.

Andreas Bjerre-NielsenKelton MinorPiotr SapieżyńskiSune LehmannDavid Dreyer Lassen
Published in: PloS one (2020)
Understanding which transportation modes people use is critical for smart cities and planners to better serve their citizens. We show that using information from pervasive Wi-Fi access points and Bluetooth devices can enhance GPS and geographic information to improve transportation detection on smartphones. Wi-Fi information also improves the identification of transportation mode and helps conserve battery since it is already collected by most mobile phones. Our approach uses a machine learning approach to determine the mode from pre-prepocessed data. This approach yields an overall accuracy of 89% and average F1 score of 83% for inferring the three grouped modes of self-powered, car-based, and public transportation. When broken out by individual modes, Wi-Fi features improve detection accuracy of bus trips, train travel, and driving compared to GPS features alone and can substitute for GIS features without decreasing performance. Our results suggest that Wi-Fi and Bluetooth can be useful in urban transportation research, for example by improving mobile travel surveys and urban sensing applications.
Keyphrases
  • machine learning
  • health information
  • healthcare
  • mental health
  • big data
  • emergency department
  • electronic health record
  • deep learning
  • climate change