Abstract
Nowadays heterogeneous mobile data sources are producing an enormous amount of contextual information that can improve our interpretation of discovered mobility patterns. Because both an entity and the data sources can be mobile, what context is and how it can be used to interpret mobility patters may vary anyplace at anytime. This chapter describes an approach for tailoring mobility patterns based on the synergy of trajectory and mobility pattern annotation techniques, where contexts are represented as dynamic semantic views. These views are obtained after the classification of context variables that are selected based on the classification criteria previously proposed for a taxonomy of collective phenomena. An experiment is used to illustrate the proposed approach for tailoring moving flock patterns to contexts of visitors in a recreational area.
Keywords
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.
This is a preview of subscription content, log in via an institution.
Buying options
Tax calculation will be finalised at checkout
Purchases are for personal use only
Learn about institutional subscriptionsReferences
Alvares L, Bogorny V, Kuijpers B, de Macêdo J, Moelans B, Vaisman A (2007a) A model for enriching trajectories with semantic geographical information. In: Proceedings of the 15th annual ACM international symposium on advances in geographic information systems, pp 1–8
Alvares L, Bogorny V, Kuijpers B, Moelans B, de Macêdo J, Palma A (2007b) Towards semantic trajectory knowledge discovery (Tech. Rep.). Hasselt University, Belgium
Axhausen K, Schönfelder S, Wolf J, Oliveira M, Samaga U (2003) 80 weeks of GPS-traces: approaches to enriching the trip information. In Transp Res Rec 1870:46–54
Baglioni M, de Macêdo J, Renso C, Wachowicz M (2008) An ontology-based approach for the semantic modelling and reasoning on trajectories. In: Song I, Piattini M, Chen Y, Hartmann S, Grandi F, Trujillo J et al (eds) Advances in conceptual modeling challenges and opportunities, lecture notes in computer science, vol 5232. Springer, Berlin, pp 344–353
Baglioni M, de Macêdo J, Renso C, Trasarti R, Wachowicz M (2009) Towards semantic interpretation of movement behavior. In: Cartwright W, Gartner G, Meng L, Peterson M (eds) Advances in GIScience, lecture notes in geoinformation and cartography. Springer, Berlin, pp 271–288
Bolchini C, Orsi G, Quintarelli E, Schreiber FA, Tanca L (2011) Context modelling and context awareness: steps forward in the context-ADDICT project. IEEE Data Eng Bull 34(2):47–54
Brézillon P, Pomerol J-C (1999) Contextual knowledge sharing and cooperation in intelligent assistant systems. Le Travail Humain 62(3):223–246
Chen G, Kotz D (2000) A survey of context-aware mobile computing research, technical report TR2000-381, department of computer science, Dartmouth College. Retrieved from. http://www.cs.dartmouth.edu/reports/TR2000-381.pdf on November 07 2012
Crestani F, Ruthven I (2007) Special issue on contextual information retrieval systems. Inf Retrieval 10(2):111–113
Dey AK (2001) Understanding and using context. Pers Ubiquit Comput 5(1):4–7
Göker A, Myrhaug HI (2002) User context and personalisation. In: Workshop proceedings for the 6th European conference on case based reasoning. Aberdeen, Sept 2002. Retrieved from http://openaccess.city.ac.uk/624/2/User_Context_and_Personalisation.pdf on November 07 2012
Guc B, May M, Saygin Y, Körner C (2008) Semantic annotation of GPS trajectories. Paper presented at the 11th AGILE international conference on geographic information science. Girona
Hariri A, Tabary D, Lepreux S, Kolski C (2008) Context aware business adaptation toward user interface adaptation. Communications of SIWN, 3 June 2008, pp 46–52
Kofod-Petersen A, Mikalsen M (2005) Context: representation and reasoning. Representing and reasoning about context in a mobile environment. Revue d’Intell Artificielle 19(3):479–498
Marshall CC (1998) Toward an ecology of hypertext annotation. In: Grenbaek K, Mylonas E, Shipman FM, III (eds) Proceedings of the ninth ACM conference on hypertext and hypermedia, the association for computing machinery, 20–24 June 1998, Pittsburgh, New York, pp 40–49
Mei Q, Xin D, Cheng H, Han J, Zhai C (2006) Generating semantic annotations for frequent patterns with context analysis. In: Proceedings of the 12th ACM SIGKDD international conference on knowledge discovery and data mining, pp 337–346
Mountain D, Raper J (2001) Modelling human spatio-temporal behaviour: a challenge for location based services. In: Proceedings of the 6th international conference on GeoComputation
Rasch K, Li F, Sehic S, Ayani R, Dustdar S (2011) Context-driven personalized service discovery in pervasive environments. Science + business media, LLC 2011. Retrieved from. http://www.infosys.tuwien.ac.at/Staff/sd/papers/Zeitschriftenartikel%20Fei%20Li%20world%20wide%20web.pdf on 7 Nov 2012
Ryan N, Pascoe J, Morse D (1998) Enhanced reality fieldwork: the context-aware archaeological assistant. In: Gaffney V, van Leusen M, Exxon S (eds) Computer applications and quantitative methods in archaeology. British Archaeological Reports. Tempus Reparatum, Oxford
Schilit BN, Theimer MM (1994) Disseminating active map information to mobile hosts. IEEE Netw 8(5):22–32
Schmidt A (2000) Implicit human computer interaction through context. Pers Ubiquit Comput 4(2/3):191–199
Schmidt A (2011) Interactive context-aware systems interacting with ambient intelligence. In: Riva G, Vatalaro F, Davide F, Alcañiz M (eds) Ambient intelligence, pp 159–178
Uren V, Cimiano P, Iria J, Handschuh S, Vargas-Vera M, Motta E, Ciravegna F (2006) Semantic annotation for knowledge management: requirements and a survey of the state of the art. J Web Seman 4(1):14–28
Wachowicz M, Ong R, Renso C, Nanni M (2011) Discovering moving flock patterns among pedestrians through spatio-temporal coherence. Int J Geogr Inf Sci 25(11):1849–1864
Wolf J (2000) Using GPS data loggers to replace travel diaries in the collection of travel data. Dissertation, Georgia Institute of Technology, Atlanta, GA
Wolf J, Guensler R, Bachman W (2001) Elimination of the travel diary: an experiment to derive trip purpose from GPS travel data. In Transp Res Rec 1768:125–134
Wood Z, Galton A (2009) A taxonomy of collective phenomena. Appl Ontol 4(3–4):267–292
Yan Z (2010) Traj-ARIMA: a spatial-time series model for network-constrained trajectory. In: Proceedings of the 2nd international workshop on computational transportation science, pp 11–16
Yan Z, Spaccapietra S (2009) Towards semantic trajectory data analysis: a conceptual and computational approach. Paper presented at 35th very large data base (VLDB) PhD workshop, Lyon, France
Yan Z, Chakraborty D, Parent C, Spaccapietra S, Aberer K (2011) SeMiTri: a framework for semantic annotation of heterogeneous trajectories. In: Proceedings of the 14th international conference on extending database technology, pp 259–270
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2013 Springer International Publishing Switzerland
About this chapter
Cite this chapter
Wachowicz, M., Ong, R., Renso, C. (2013). Tailoring Trajectories and their Moving Patterns to Contexts. In: Vandenbroucke, D., Bucher, B., Crompvoets, J. (eds) Geographic Information Science at the Heart of Europe. Lecture Notes in Geoinformation and Cartography. Springer, Cham. https://doi.org/10.1007/978-3-319-00615-4_16
Download citation
DOI: https://doi.org/10.1007/978-3-319-00615-4_16
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-00614-7
Online ISBN: 978-3-319-00615-4
eBook Packages: Earth and Environmental ScienceEarth and Environmental Science (R0)