Robust Online Matrix Factorization for Dynamic Background Subtraction

28 May 2017 Hongwei Yong Deyu Meng WangMeng Zuo Lei Zhang

We propose an effective online background subtraction method, which can be robustly applied to practical videos that have variations in both foreground and background. Different from previous methods which often model the foreground as Gaussian or Laplacian distributions, we model the foreground for each frame with a specific mixture of Gaussians (MoG) distribution, which is updated online frame by frame... (read more)

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