Browse > Article
http://dx.doi.org/10.7236/IJASC.2018.7.4.27

Design of a machine learning based mobile application with GPS, mobile sensors, public GIS: real time prediction on personal daily routes  

Shin, Hyunkyung (Department of Mathematical Finance, Gachon University)
Publication Information
International journal of advanced smart convergence / v.7, no.4, 2018 , pp. 27-39 More about this Journal
Abstract
Since the global positioning system (GPS) has been included in mobile devices (e.g., for car navigation, in smartphones, and in smart watches), the impact of personal GPS log data on daily life has been unprecedented. For example, such log data have been used to solve public problems, such as mass transit traffic patterns, finding optimum travelers' routes, and determining prospective business zones. However, a real-time analysis technique for GPS log data has been unattainable due to theoretical limitations. We introduced a machine learning model in order to resolve the limitation. In this paper presents a new, three-stage real-time prediction model for a person's daily route activity. In the first stage, a machine learning-based clustering algorithm is adopted for place detection. The training data set was a personal GPS tracking history. In the second stage, prediction of a new person's transient mode is studied. In the third stage, to represent the person's activity on those daily routes, inference rules are applied.
Keywords
global position system(GPS); public geographic information system(GIS) data; mobile sensors; machine learning; inference rules; daily route prediction;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Jorge-L. Reyes-Ortiz, Luca Oneto, Albert SamA , Xavier Parra, Davide Anguita. "Transition-Aware Human Activity Recognition Using Smartphones", Neurocomputing. Springer, pp. 754, 2015.
2 Ricardo Chavarriaga, Hesam Sagha, Alberto Calatroni, Sundaratejaswi Digumarti, Gerhard Troster, Jose del R. Millan, Daniel Roggen. "The Opportunity challenge: A benchmark database for on-body sensor-based activity recognition", Pattern Recognition Letters, Vol 34, pp.1780-1788, 2013.   DOI
3 OpenStreetMap. www.openstreetmap.org
4 Manuel J. A. Eugster and Thomas Schlesinger. "osmar: OpenStrretMap and R", R Journal Vol 5. pp.1, 2013.
5 Lin Lao, Dieter Fox, and H. Kauts. "Location based activity recognition", In Proc. NIPS, 2005.
6 C. Zhou, N. Bhantnagar, S. Shekhar, and L. Terveen. "Mining Personally Important Places from GPS Tracks", ICDEW '07 Proc. 2007 IEEE 23rd ICDEW.
7 M. Khalaf-Allah. "A Novel GPS-free Method for Mobile Unit Global Positioning in Outdoor Wireless Environments", Wireless Personal Communications, Vol. 44, No. 3, pp, 311-322, 2008.   DOI
8 T. Theodoridis, A. Agapitos, H. Hu, and S. M. Lucas. "A QA-TSK Fuzzy Model versus Evolutionary Decision Trees Towards Nonlinear Action Pattern Recognition", IEEE International Conference in Information and Automation (ICIA-2010), pp. 1813-1818, 2010.
9 Y. Zheng, L. Lie, L. Wang, X. Xie. "Learning Transportation Mode from Raw GPS data for Geographic Applications on the Web", Proc. WWW .08 of the 17 ICWWW, 2008.
10 H. Azami, M. Mosavi, S. Sanei. "Classification of GPS Satellites Using Improved Back Propagation Training Algorithms", Wireless Personal Communications, Vol. 71, No. 2, pp. 789-803, 2013.   DOI
11 Z. Salcic, E. Chan. "Mobile Station Positioning Using GSM Cellular Phone and Artificial Neural Networks" , Wireless Personal Communications Vol. 14, No.3, pp. 235-254, 2000.   DOI
12 D. Wang, M. Fattouche, F. Ghannouchi, D. Wang. "Geometry-Based Doppler Analysis for GPS Receivers", Wireless Personal Communications , Vol. 68, No. 1, pp. 1-13, 2013.   DOI
13 K. Ellis, S. Godbole, S. Marshall, G. Lanckriet, J. Staudenmayer, and J. Kerr. "Identifying Active Travel Behaviors in Challenging Environments Using GPS, Accelerometers, and Machine Learning Algorithms", frontiers in Public Health, vol. 2., pp. 1-8, 2014.
14 A. Reiss and D. Stricker. "Introducing a New Benchmarked Dataset for Activity Monitoring", The 16th IEEE International Symposium on Wearable Computers (ISWC), 2012.
15 A. Reiss and D. Stricker. "Creating and Benchmarking a New Dataset for Activity Monitoring", The 5th Workshop on Affect and Behavior Related Assistance (ABRA), 2012.
16 Davide Anguita, Alessandro Ghio, Luca Oneto, Xavier Parra and Jorge L. Reyes-Ortiz. "A Public Domain Dataset for Human Activity Recognition Using Smartphones". 21th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning, ESANN 2013. Bruges, Belgium, 2013.