Globular Gaussian Essential Part in Meager Bayesian Knowledge Structure for Nonlinear Deterioration
DOI:
https://doi.org/10.32628/CSEIT21719Keywords:
Trajectory Segmentation, Sub Trajectory Sampling, Data Mining, Moving Object Databases.Abstract
Moving Object Databases (MOD), although ubiquitous, still call for methods that will be able to understand, search, analyze, and browse their spatiotemporal content. In this paper, we propose a method for trajectory segmentation and sampling based on the representativeness of the (sub) trajectories in the MOD. In order to find the most representative sub trajectories, the following methodology is proposed. First, a novel global voting algorithm is performed, based on local density and trajectory similarity information. This method is applied for each segment of the trajectory, forming a local trajectory descriptor that represents line segment representativeness. The sequence of this descriptor over a trajectory gives the voting signal of the trajectory, where high values correspond to the most representative parts. Then, a novel segmentation algorithm is applied on this signal that automatically estimates the number of partitions and the partition borders, identifying homogenous partitions concerning their representativeness. Finally, a sampling method over the resulting segments yields the most representative sub trajectories in the MOD. Our experimental results in synthetic and real MOD verify the effectiveness of the proposed scheme, also in comparison with other sampling techniques.
References
- R. H. Guting and M. Schneider, Moving Object Databases. Morgan Kaufmann Publishers, 2005.
- F. Giannotti and D. Pedreschi, Mobility, Data Mining and Privacy, Geographic Knowledge Discovery. Springer-Verlag, 2008.
- M. Hadjieleftheriou, G. Kollios, V. Tsotras, and D. Gunopulos, "Efficient Indexing of Spatiotemporal Objects," Proc. Int'l Conf. Extending Database Technology (EDBT), 2002.
- J. Han, J. G. Lee, and K. Y. Whang, "Trajectory Clustering: A Partition-and-Group Framework," Proc. ACM SIGMOD Int'l Conf.Management of Data (SIGMOD), pp. 593-604, 2007.
- J.G. Lee, J. Han, X. Li, and H. Gonzalez, "Traclass: Trajectory Classification Using Hierarchical Region-Based and Trajectory- Based Clustering," Proc. VLDB Endowment, vol. 1, pp. 1081-1094, 2008.
- A. Anagnostopoulos, M. Vlachos, M. Hadjieleftheriou, E. Keogh, and P.S. Yu, "Global Distance-Based Segmentation of Trajectories," Proc. ACM SIGKDD Int'l Conf. Knowledge Discovery and Data Mining (KDD), pp. 34-43, 2006.
- L. Chen, M.T. O zsu, and V. Oria, "Robust and Fast Similarity Search for Moving Object Trajectories," Proc. ACM SIGMOD Int'l Conf. Management of Data (SIGMOD), pp. 491-502, 2005.
- M. Nanni and D. Pedreschi, "Time-Focused Clustering of Trajectories of Moving Objects," J. Intelligent Information Systems, vol. 27, no. 3, pp. 267-289, 2006.
- N. Pelekis, I. Kopanakis, G. Marketos, I. Ntoutsi, G. Andrienko, and Y. Theodoridis, "Similarity Search in Trajectory Databases," Proc. Int'l Symp. Temporal Representation and Reasoning (TIME), pp. 129-140, 2007.
- M. Benkert, J. Gudmundsson, F. Hubner, and T. Wolle, "Reporting Flock Patterns," Proc. Conf. Ann. European Symp. (ESA), pp. 660- 671, 2006.
- Y. Li, J. Han, and J. Yang, "Clustering Moving Objects," Proc. ACM SIGKDD Int'l Conf. Knowledge Discovery and Data Mining (KDD), pp. 617-622, 2004.
- N. Pelekis, I. Kopanakis, E.E. Kotsifakos, E. Frentzos, and Y. Theodoridis, "Clustering Trajectories of Moving Objects in an Uncertain World," Proc. Int'l Conf. Data Mining (ICDM), 2009.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT

This work is licensed under a Creative Commons Attribution 4.0 International License.