作者
Giannis Chantas, Theodosios Gkamas, Christophoros Nikou
发表日期
2014/11
期刊
Journal of mathematical imaging and vision
卷号
50
页码范围
199-213
出版商
Springer US
简介
The Horn-Schunck (HS) optical flow method is widely employed to initialize many motion estimation algorithms. In this work, a variational Bayesian approach of the HS method is presented, where the motion vectors are considered to be spatially varying Student’s t-distributed unobserved random variables, i.e., the prior is a multivariate Student’s t-distribution, while the only observations available is the temporal and spatial image difference. The proposed model takes into account the residual resulting from the linearization of the brightness constancy constraint by Taylor series approximation, which is also assumed to be a spatially varying Student’s t-distributed observation noise. To infer the model variables and parameters we recur to variational inference methodology leading to an expectation-maximization (EM) framework with update equations analogous to the Horn-Schunck approach. This is …
引用总数
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学术搜索中的文章
G Chantas, T Gkamas, C Nikou - Journal of mathematical imaging and vision, 2014