Real Time Detection and Tracking of Spatial Event Clusters

Article English OPEN
Andrienko, N. ; Andrienko, G. ; Fuchs, G. ; Rinzivillo, S. ; Betz, H-D. (2015)

We demonstrate a system of tools for real-time detection of significant clusters of spatial events and observing their evolution. The tools include an incremental stream clustering algorithm, interactive techniques for controlling its operation, a dynamic map display showing the current situation, and displays for investigating the cluster evolution (time line and space-time cube).
  • References (4)

    1. Aggarwal, C.C., Han, J., Wang, J., Yu, P.S.: A framework for clustering evolving data streams, in: Proc. 29th Int. Conf. Very Large Data Bases, Berlin, Germany, 2003.

    2. Cao, F., Ester, M., Qian, W., Zhou, A.: Density-based clustering over an evolving data stream with noise, in: Proc. 6th SIAM Int. Conf. Data Mining, SIAM, Bethesda, Maryland, USA, 2006.

    3. Andrienko, N., Andrienko, G.: Spatial generalization and aggregation of massive movement data. IEEE Trans. Visualization and Computer Graphics, 17(2): 205-219, 2011.

    4. Bouguelia M.-R., Belaïd Y., Belaïd, A.: An Adaptive Incremental Clustering Method Based on the Growing Neural Gas Algorithm, in: Proc. 2nd Int. Conf. Pattern Recognition Applications and Methods - ICPRAM 2013, 42-49, 2013.

  • Metrics
    views in OpenAIRE
    views in local repository
    downloads in local repository

    The information is available from the following content providers:

    From Number Of Views Number Of Downloads
    City Research Online - IRUS-UK 0 32
Share - Bookmark