Efficient Moving Object Detection for Lightweight Applications on Smart Cameras

@article{Cuevas2013EfficientMO,
  title={Efficient Moving Object Detection for Lightweight Applications on Smart Cameras},
  author={Carlos Cuevas and Narciso N. Garc{\'i}a},
  journal={IEEE Transactions on Circuits and Systems for Video Technology},
  year={2013},
  volume={23},
  pages={1-14}
}
Recently, the number of electronic devices with smart cameras has grown enormously. These devices require new, fast, and efficient computer vision applications that include moving object detection strategies. In this paper, a novel and high-quality strategy for real-time moving object detection by nonparametric modeling is presented. It is suitable for its application to smart cameras operating in real time in a large variety of scenarios. While the background is modeled using an innovative… CONTINUE READING
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