Learning the Regularization Operator for the Optical Flow Problem
- Autores: Kuzmin A.I.1
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Afiliações:
- Skolkolvo Institute of Science and Technology
- Edição: Volume 44, Nº 3 (2018)
- Páginas: 139-147
- Seção: Article
- URL: https://journals.rcsi.science/0361-7688/article/view/176601
- DOI: https://doi.org/10.1134/S0361768818030040
- ID: 176601
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Resumo
The task of displacement estimation for frames of a video sequence is considered. A new convolutional neural network architecture for the optical flow problem is proposed. The method is based on learning the regularization operator for a fast optimization method. The proposed method has low computational complexity and memory footprint at test time. The neural network architecture is based on unrolling iterations of a fast primal-dual method as layers of a convolutional neural network. Iterations of the optimization method are represented as convolutions with filters that are trained on ground truth data by backpropagation. A real-time implementation using graphics processing units is proposed. Experimental results demonstrate an improved quality of the optical flow field as compared to the optimization method based on a fixed regularization operator.
Sobre autores
A. Kuzmin
Skolkolvo Institute of Science and Technology
Autor responsável pela correspondência
Email: kuzmin@academ.org
Rússia, ul. Nobelya 3, Moscow, 143026
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