A Variational Aggregation Framework for Patch-Based Optical Flow Estimation

被引:0
|
作者
Denis Fortun
Patrick Bouthemy
Charles Kervrann
机构
[1] Inria - Centre de Rennes -Bretagne Atlantique,Center for Biomedical Imaging
[2] EPFL, Signal Processing core (CIBM
[3] Biomedical Imaging Group,SP)
[4] EPFL,undefined
关键词
Optical flow; Parametric motion; Aggregation; Variational optimization;
D O I
暂无
中图分类号
学科分类号
摘要
We propose a variational aggregation method for optical flow estimation. It consists of a two-step framework, first estimating a collection of parametric motion models to generate motion candidates, and then reconstructing a global dense motion field. The aggregation step is designed as a motion reconstruction problem from spatially varying sets of motion candidates given by parametric motion models. Our method is designed to capture large displacements in a variational framework without requiring any coarse-to-fine strategy. We handle occlusion with a motion inpainting approach in the candidates computation step. By performing parametric motion estimation, we combine the robustness to noise of local parametric methods with the accuracy yielded by global regularization. We demonstrate the performance of our aggregation approach by comparing it to standard variational methods and a discrete aggregation approach on the Middlebury and MPI Sintel datasets.
引用
收藏
页码:280 / 299
页数:19
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