Video super-resolution via deep draft-ensemble learning

R Liao, X Tao, R Li, Z Ma, J Jia - Proceedings of the IEEE …, 2015 - openaccess.thecvf.com
Proceedings of the IEEE international conference on computer …, 2015openaccess.thecvf.com
We propose a new direction for fast video super-resolution (VideoSR) via a SR draft
ensemble, which is defined as the set of high-resolution patch candidates before final image
deconvolution. Our method contains two main components--ie, SR draft ensemble
generation and its optimal reconstruction. The first component is to renovate traditional
feedforward reconstruction pipeline and greatly enhance its ability to compute different
super resolution results considering large motion variation and possible errors arising in this …
Abstract
We propose a new direction for fast video super-resolution (VideoSR) via a SR draft ensemble, which is defined as the set of high-resolution patch candidates before final image deconvolution. Our method contains two main components--ie, SR draft ensemble generation and its optimal reconstruction. The first component is to renovate traditional feedforward reconstruction pipeline and greatly enhance its ability to compute different super resolution results considering large motion variation and possible errors arising in this process. Then we combine SR drafts through the nonlinear process in a deep convolutional neural network (CNN). We analyze why this framework is proposed and explain its unique advantages compared to previous iterative methods to update different modules in passes. Promising experimental results are shown on natural video sequences.
openaccess.thecvf.com
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