Egyptian Informatics Journal (Mar 2011)

An extended k-means technique for clustering moving objects

  • Omnia Ossama,
  • Hoda M.O. Mokhtar,
  • Mohamed E. El-Sharkawi

DOI
https://doi.org/10.1016/j.eij.2011.02.007
Journal volume & issue
Vol. 12, no. 1
pp. 45 – 51

Abstract

Read online

k-means algorithm is one of the basic clustering techniques that is used in many data mining applications. In this paper we present a novel pattern based clustering algorithm that extends the k-means algorithm for clustering moving object trajectory data. The proposed algorithm uses a key feature of moving object trajectories namely, its direction as a heuristic to determine the different number of clusters for the k-means algorithm. In addition, we use the silhouette coefficient as a measure for the quality of our proposed approach. Finally, we present experimental results on both real and synthetic data that show the performance and accuracy of our proposed technique.

Keywords