Semantic labeling of track events using time series segmentation and shape analysis

  • Authors:
  • Josh Harguess;J. K. Aggarwal

  • Affiliations:
  • Computer & Vision Research Center, Department of ECE, The University of Texas at Austin;Computer & Vision Research Center, Department of ECE, The University of Texas at Austin

  • Venue:
  • ICIP'09 Proceedings of the 16th IEEE international conference on Image processing
  • Year:
  • 2009

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Abstract

This paper presents a novel framework for applying semantic labels to events within a track. A track is a two-dimensional (2D) or a three-dimensional (3D) signal in time where each point of the signal is the x and y (and z) centroid spatial coordinate of an object at a specific frame of the video. The track may be generated by the movement of a vehicle, person, or object. In the 2D case, the signal is decomposed into x and y time series for use in one-dimensional time series segmentations. Then the results of the two segmentations are combined to produce a 2D signal segmentation of the track which results in unique events to be labeled. The Procrustes measure, from shape analysis, is employed along with template matching to find the most likely trajectory of each individual event. Once each event is labeled with a semantic description from the template, we enhance the label using other basic measurements based on the track. The application of our framework on 4 vehicle tracks from original videos is shown to display the efficacy of our method.