Hierarchical Estimation and Segmentation of Dense Motion Fields

作者:Etienne Mémin, Patrick Pérez

摘要

In this paper we present a comprehensive energy-based framework for the estimation and the segmentation of the apparent motion in image sequences. The robust cost functions and the associated hierarchical minimization techniques that we propose mix efficiently non-parametric (dense) representations, local interacting parametric representations, and global non-interacting parametric representations related to a partition into regions. Experimental comparisons, both on synthetic and real images, demonstrate the merit of the approach on different types of photometric and kinematic contents ranging from moving rigid objects to moving fluids.

论文关键词:apparent motion, robust discontinuity-preserving estimation, motion-based segmentation, hierarchical non-linear minimization, dense and parametric representations

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论文官网地址:https://doi.org/10.1023/A:1013539930159