Abstract
Recent improvements in positioning technology has led to a much wider availability of massive moving object data. A crucial task is to find the moving objects that travel together. Usually, these object sets are called spatio-temporal patterns. Analyzing such data has been applied in many real world applications, e.g., in ecological study, vehicle control, mobile communication management, etc. However, few tools are available for flexible and scalable analysis of massive scale moving objects. Additionally, there is no framework devoted to efficiently manage multiple kinds of patterns at the same time. Motivated by this issue, we propose a framework, named GeT_Move, which is designed to extract and manage different kinds of spatio-temporal patterns concurrently. A user-friendly interface is provided to facilitate interactive exploration of mining results. Since GeT_Move is tested on many kinds of real data sets, it will benefit users to carry out versatile analysis on these kinds of data by exhibiting different kinds of patterns efficiently.
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References
Jeung, H., Yiu, M.L., Zhou, X., Jensen, C.S., Shen, H.T.: Discovery of Convoys in Trajectory Databases. PVLDB 1(1), 1068–1080 (2008)
Kalnis, P., Mamoulis, N., Bakiras, S.: On Discovering Moving Clusters in Spatio-temporal Data. In: Medeiros, C.B., Egenhofer, M., Bertino, E. (eds.) SSTD 2005. LNCS, vol. 3633, pp. 364–381. Springer, Heidelberg (2005)
Li, Z., Ding, B., Han, J., Kays, R.: Swarm: Mining Relaxed Temporal Moving Object Clusters. In: VLDB 2010, Singapore, pp. 723–734 (2010)
Li, Z., Ji, M., Lee, J.-G., Tang, L., Yu, Y., Han, J., Kays, R.: Movemine: Mining moving object databases. In: SIGMOD 2010, Indianapolis, Indiana, pp. 1203–1206 (2010)
Wang, Y., Lim, E.-P., Hwang, S.-Y.: Efficient Mining of Group Patterns from User Movement Data. In: DKE, pp. 240–282 (2006)
Han, J., Li, Z., Tang, L.A.: Mining Moving Object, Trajectory and Traffic Data. In: Kitagawa, H., Ishikawa, Y., Li, Q., Watanabe, C. (eds.) DASFAA 2010. LNCS, vol. 5982, pp. 485–486. Springer, Heidelberg (2010)
Mamoulis, N., Cao, H., Kollios, G., Hadjieleftheriou, M., Tao, Y., Cheung, D.W.: Mining, Indexing, and Querying Historical Spatiotemporal Data. In: SIGKDD 2004, pp. 236–245 (2004)
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Hai, P.N., Ienco, D., Poncelet, P., Teisseire, M. (2012). Extracting Trajectories through an Efficient and Unifying Spatio-temporal Pattern Mining System. In: Flach, P.A., De Bie, T., Cristianini, N. (eds) Machine Learning and Knowledge Discovery in Databases. ECML PKDD 2012. Lecture Notes in Computer Science(), vol 7524. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-33486-3_55
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DOI: https://doi.org/10.1007/978-3-642-33486-3_55
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