Flow-Process Foreground Region of Interest Detection Method for Video Codecs

@article{Zhang2017FlowProcessFR,
  title={Flow-Process Foreground Region of Interest Detection Method for Video Codecs},
  author={Zhewei Zhang and Tao Jing and Jingning Han and Yaowu Xu and Xuejing Li},
  journal={IEEE Access},
  year={2017},
  volume={5},
  pages={16263-16276}
}
Detecting the foreground region of interest (ROI) for video sequences is an important issue both for video codecs and monitoring systems. In this paper, we propose a flow-process-based method to detect foreground ROI using four steps: global motion compensation, motion block extraction, multi-layer segmentation, and model updating. The former two procedures extract the foreground motion blocks and form a motion mask, and the latter two procedures remove the pixels belonging to the background… CONTINUE READING

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