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Alla Petrakova Trajectory Clustering TRACLUS UCF Motion Pattern Algorithm Attempt to find a Generally Accepted Quantiative Measure QUALITATIVE Ground truth Visual inspection Synthetic datasets Comparison to another algorithm QUANTITATIVE Correct Clustering Rate Sum of Squared Error Accuracy Measure ± Error or Noise Penalty J. gil Lee and J. Han. Trajectory clustering: A partition-and-group framework. In Proceedings of the ACM International Conference on Management of Data (SIGMOD), Beijing, China, pages 593–604, 2007. Cited by 357 N denotes the set of all noise line segments. B. Morris and M. Trivedi, “Learning Trajectory Patterns by Clustering: Experimental Studies and Comparative Evaluation,” Proc. IEEE Conf. Computer Vision and Pattern Recognition, pp. 312- 319, June 2009. Find one-to-one mapping between the ground truth and clustering labels which maximized the number of matches. where N is the total number of trajectories and pc denotes the total number of trajectories matched to the c-th cluster. IN – total number of clusters bi = the number of labeled trajectories that are most frequent in a given cluster Bi = the total number of trajectories in a cluster Dataset: Used in Following Papers: M. Vlachos, G. Kollios, and D. Gunopulos, “Discovering Similar Multidimensional Trajectories,” Proc. Int’l Conf. Data Eng., pp. 673- 684, 2002. (cited by 631) Lei Chen, M. Tamer Özsu, and Vincent Oria. 2005. Robust and fast similarity search for moving object trajectories. In Proc. of the 2005 ACM SIGMOD int’l conf. on Management of data (SIGMOD '05). ACM, New York, NY, USA, 491-502. DOI=10.1145/1066157.1066213 (Cited by 395) A. Naftel and S. Khalid, “Motion Trajectory Learning in the DFT- Coefficient Feature Space,” Proc. IEEE Int’l Conf. Computer Vision Systems, pp. 47-47, Jan. 2006. (cited by 26) W. Hu, X. Li, G. Tian, S. Maybank, and Z. Zhang, ” An Incremental DPMM-Based Method for Trajectory Clustering, Modeling, and Retrieval”, IEEE Transactions on Pattern Analysis and Machine Intelligence, VOL. 35, NO. 5, MAY 2013 Tsumoto, S., Hirano, S.: Detection of risk factors using trajectory mining. J. Intell. Inf. Syst. 36(3), 403–425 (2011) (cited by 15) No meaningful results Separating out individual trajectories