• DocumentCode
    594954
  • Title

    Multi-modal abnormality detection in video with unknown data segmentation

  • Author

    Tien Vu Nguyen ; Dinh Phung ; Rana, Sohel ; Duc Son Pham ; Venkatesh, Svetha

  • Author_Institution
    Centre for Pattern Recognition & Data Analytics, Deakin Univ., Geelong, VIC, Australia
  • fYear
    2012
  • fDate
    11-15 Nov. 2012
  • Firstpage
    1322
  • Lastpage
    1325
  • Abstract
    This paper examines a new problem in large scale stream data: abnormality detection which is localized to a data segmentation process. Unlike traditional abnormality detection methods which typically build one unified model across data stream, we propose that building multiple detection models focused on different coherent sections of the video stream would result in better detection performance. One key challenge is to segment the data into coherent sections as the number of segments is not known in advance and can vary greatly across cameras; and a principled way approach is required. To this end, we first employ the recently proposed infinite HMM and collapsed Gibbs inference to automatically infer data segmentation followed by constructing abnormality detection models which are localized to each segmentation. We demonstrate the superior performance of the proposed framework in a real-world surveillance camera data over 14 days.
  • Keywords
    hidden Markov models; image segmentation; video cameras; video streaming; video surveillance; automatic data segmentation inference; collapsed Gibbs inference; data segmentation process; infinite HMM; large scale stream data; multimodal abnormality detection models; multiple detection models; real-world surveillance camera data; unified model; video stream; Cameras; Computational modeling; Data models; Detectors; Hidden Markov models; Surveillance; Vectors;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Pattern Recognition (ICPR), 2012 21st International Conference on
  • Conference_Location
    Tsukuba
  • ISSN
    1051-4651
  • Print_ISBN
    978-1-4673-2216-4
  • Type

    conf

  • Filename
    6460383