A region-based selective optical flow back-projection for genuine motion vector estimation
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摘要
Motion vector plays one significant feature in moving object segmentation. However, the motion vector in this application is required to represent the actual motion displacement, rather than regions of visually significant similarity. In this paper, region-based selective optical flow back-projection (RSOFB) which back-projects optical flows in a region to restore the region's motion vector from gradient-based optical flows, is proposed to obtain genuine motion displacement. The back-projection is performed based on minimizing the projection mean square errors of the motion vector on gradient directions. As optical flows of various magnitudes and directions provide various degrees of reliability in the genuine motion restoration, the optical flows to be used in the RSOFB are optimally selected based on their sensitivity to noises and their tendency in causing motion estimation errors. In this paper a deterministic solution is also derived for performing the minimization and obtaining the genuine motion magnitude and motion direction.
论文关键词:Horn–Schunck optical flow constraint,Motion estimation,Optical flow computation,Region-based matching
论文评审过程:Received 1 March 2006, Revised 1 June 2006, Accepted 9 June 2006, Available online 5 September 2006.
论文官网地址:https://doi.org/10.1016/j.patcog.2006.06.019