Smoothing of optical flow using robustified diffusion kernels

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This paper proposes a new optical flow smoothing methodology combining vector diffusion and robust statistics. Vector smoothing using diffusion preserves moving object boundaries and the main motion discontinuities. According to a study provided in the paper, diffusion does not remove the outliers but spreads them out, introducing a bias in the neighbourhood. In this paper robust statistics operators such as the median and alpha-trimmed mean are considered for robustifying the diffusion kernels. The robust diffusion smoothing process is extended to 3-D lattices as well. The proposed algorithms are applied for smoothing artificially generated vector fields as well as the optical flow estimated from image sequences.

论文关键词:Anisotropic diffusion,Robust statistics,Optical flow smoothing

论文评审过程:Received 6 October 2008, Revised 23 March 2010, Accepted 4 April 2010, Available online 27 April 2010.

论文官网地址:https://doi.org/10.1016/j.imavis.2010.04.001