• Corpus ID: 15176559

Human Motion Detection and Tracking for Video Surveillance

@inproceedings{Banerjee2007HumanMD,
  title={Human Motion Detection and Tracking for Video Surveillance},
  author={Prithviraj Banerjee and Somnath Sengupta},
  year={2007}
}
An Automated Video Surveillance system is presented in this paper. The system aims at tracking an object in motion and classifying it as a Human or Non-Human entity, which would help in subsequent human activity analysis. The system employs a novel combination of an Adaptive Background Modeling Algorithm (based on the Gaussian Mixture Model) and a Human Detection for Surveillance (HDS) System. The HDS system incorporates a Histogram of Oriented Gradients based human detector which is well known… 

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