Real-time stopped object detection by neural dual background modeling

  • Authors:
  • Giorgio Gemignani;Lucia Maddalena;Alfredo Petrosino

  • Affiliations:
  • DSA, University of Naples Parthenope, Centro Direzionale, Naples, Italy;ICAR, National Research Council;DSA, University of Naples Parthenope, Centro Direzionale, Naples, Italy

  • Venue:
  • Euro-Par 2010 Proceedings of the 2010 conference on Parallel processing
  • Year:
  • 2010

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Abstract

Moving object detection is a relevant step for many computer vision applications, and specifically for real-time color video surveillance systems, where processing time is a challenging issue. We adopt a dual background approach for detecting moving objects and discriminating those that have stopped, based on a neural model capable of learning from past experience and efficiently detecting such objects against scene variations. We propose a GPGPU approach allowing real-time results, by using a mapping of neurons on a 2D flat grid on NVIDIA CUDA. Several experiments show parallel perfomance and how our approach outperforms with respect to OpenMP implementation.