Information Technology Reference
In-Depth Information
References
Ahas, R., Silm, S., Järv, O., Saluveer, E., & Tiru, M. (2010). Using mobile positioning data to model
locations meaningful to users of mobile phones.
Journal of Urban Technology
,
17
(1), 3-27.
Ahas, R., Silm, S., Saluveer, E., & Järv, O. (2009). Modelling home and work locations of popu-
lations using passive mobile positioning data. In G. Gartner & K. Rehrl (Eds.),
Location based
services and telecartography II
(pp. 301-315)., Lecture Notes in Geoinformation and Cartogra-
phy Berlin: Springer.
Andersson, M., Gudmundsson, J., Laube, P., & Wolle, T. (2008). Reporting leaders and followers
among trajectories of moving point objects.
GeoInformatica
,
12
(4), 497-528.
Andrienko, N., Andrienko, G., Pelekis, N., & Spaccapietra, S. (2008). Basic concepts of movement
data. In F. Giannotti & D. Pedreschi (Eds.),
Mobility, data mining and privacy
(pp. 15-38). Berlin:
Springer.
Benkert, M., Gudmundsson, J., Hübner, F., & Wolle, T. (2008). Reporting flock patterns.
Compu-
tational Geometry
,
41
(3), 111-125.
Bleisch, S., Duckham, M., Galton, A., Laube, P., & Lyon, J. (2014). Mining candidate causal
relationships in movement patterns.
International Journal of Geographical Information Science
,
28
(2), 363-382.
Borger, L., Franconi, N., De Michele, G., Gantz, A., Meschi, F., Manica, A., et al. (2006). Effects
of sampling regime on the mean and variance of home range size estimates.
Journal of Animal
Ecology
,
75
(6), 1393-1405.
Both, A., Duckham, M., Laube, P., Wark, T., & Yeoman, J. (2013). Decentralized monitoring of
moving objects in a transportation network augmented with checkpoints.
The Computer Journal
,
56
(12), 1432-1449.
Cao, H., & Wolfson, O. (2005). Nonmaterialized motion information in transport networks. In T.
Eiter & L. Libkin (Eds.),
Database theory—ICDT 2005, proceedings
(Vol. 3363, pp. 173-188).,
Lecture Notes in Computer Science Berlin: Springer.
Delafontaine, M., Versichele, M., Neutens, T., & Van de Weghe, N. (2012). Analysing spatiotem-
poral sequences in bluetooth tracking data.
Applied Geography
,
34
, 659-668.
Dennis, T. E., Chen, W. C., Koefoed, I. M., Lacoursiere, C. J., Walker, M. M., Laube, P., et al. (2010).
Performance characteristics of small global-positioning-system tracking collars for terrestrial
animals.
Wildlife Biology in Practice
,
6
(1), 14-31.
Dodge, S., Laube, P., & Weibel, R. (2012). Movement similarity assessment using symbolic rep-
resentation of trajectories.
International Journal of Geographical Information Science
,
26
(9),
1563-1588.
Dodge, S., Weibel, R., & Lautenschütz, A.-K. (2008). Towards a taxonomy of movement patterns.
Information Visualization
,
7
(3-4), 240-252.
Du Mouza, C., & Rigaux, P. (2005). Mobility patterns.
GeoInformatica
,
9
(4), 297-319.
Fisher, P., Wood, J., & Cheng, T. (2004). Where is Helvellyn? Fuzziness of multi-scale landscape
morphometry.
Transactions of the Institute of British Geographers
,
29
(1), 106-128.
Fryxell, J. M., Hazell, M., Börger, L., Dalziel, B. D., Haydon, D. T., Morales, J. M., et al. (2008).
Multiple movement modes by large herbivores at multiple spatiotemporal scales.
Proceedings of
the National Academy of Sciences
,
105
(49), 19114-19119.
Giannotti, F., & Pedreschi, D. (2008). Mobility, data mining and privacy: A vision of convergence.
In F. Giannotti & D. Pedreschi (Eds.),
Mobility, data mining and privacy
(pp. 1-11). Berlin:
Springer.
Gong, H., Chen, C., Bialostozky, E., & Lawson, C. T. (2012). A GPS/GIS method for travel mode
detection in New York City.
Computers, Environment and Urban Systems
,
36
(2), 131-139.
Gudmundsson, J., Katajainen, J., Merrick, D., Ong, C., & Wolle, T. (2009). Compressing spatio-
temporal trajectories.
Computational Geometry
,
42
(9), 825-841.
Gudmundsson, J., van Kreveld, M., & Speckmann, B. (2007). Efficient detection of patterns in 2D
trajectories of moving points.
GeoInformatica
,
11
(2), 195-215.