Conference Proceedings
Fast trajectory clustering using Hashing methods
I Sanchez, ZMM Aye, BIP Rubinstein, K Ramamohanarao
Proceedings of the International Joint Conference on Neural Networks | IEEE | Published : 2016
Abstract
There has been an explosion in the usage of trajectory data. Clustering is one of the simplest and most powerful approaches for knowledge discovery from trajectories. In order to produce meaningful clusters, well-defined metrics are required to capture the essence of similarity between trajectories. One such distance function is Dynamic Time Warping (DTW), which aligns two trajectories together in order to determine similarity. DTW has been widely accepted as a very good distance measure for trajectory data. However, trajectory clustering is very expensive due to the complexity of the similarity functions, for example, DTW has a high computational cost O(n2), where n is the average length of..
View full abstractRelated Projects (1)
Grants
Awarded by Australian Research Council
Funding Acknowledgements
We acknowledge the Australian Research Council for funding under grant DP150103710. Ivan Sanchez was financially aided in this work by the SENESCYT/IFTH as a research scholarship recipient of the government of Ecuador. Zay Maung Maung Aye is financially aided by the MIRS and MIFRS scholarships of the University of Melbourne.