Deep Optical Flow Supervised Learning With Prior Assumptions

Traditional methods for estimating optical flow use variational model that includes data term and smoothness term, which can build a constraint relationship between two adjacent images and optical flow. However, most of them are too slow to be used in real-time applications. Recently, convolutional...

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Main Authors: Xuezhi Xiang, Mingliang Zhai, Rongfang Zhang, Yulong Qiao, Abdulmotaleb El Saddik
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8425694/
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spelling doaj-0ee79424cdd74ce1988837d98fd167aa2021-03-29T20:51:46ZengIEEEIEEE Access2169-35362018-01-016432224323210.1109/ACCESS.2018.28632338425694Deep Optical Flow Supervised Learning With Prior AssumptionsXuezhi Xiang0https://orcid.org/0000-0002-6185-833XMingliang Zhai1Rongfang Zhang2Yulong Qiao3Abdulmotaleb El Saddik4https://orcid.org/0000-0002-7690-8547School of Information and Communication Engineering, Harbin Engineering University, Harbin, ChinaSchool of Information and Communication Engineering, Harbin Engineering University, Harbin, ChinaSchool of Information and Communication Engineering, Harbin Engineering University, Harbin, ChinaSchool of Information and Communication Engineering, Harbin Engineering University, Harbin, ChinaSchool of Electrical Engineering and Computer Science, University of Ottawa, Ottawa, CanadaTraditional methods for estimating optical flow use variational model that includes data term and smoothness term, which can build a constraint relationship between two adjacent images and optical flow. However, most of them are too slow to be used in real-time applications. Recently, convolutional neural networks have been used in optical flow area successfully. Many current learning methods use large data sets that contain ground truth for network training, which can make use of prior knowledge to estimate optical flow directly. However, these methods overemphasize the factor of deep learning and ignore advantages of many traditional assumptions used in variational framework for optical flow estimation. In this paper, inspired by classical energy-based optical flow methods, we propose a novel approach for dense motion estimation, which combines traditional prior assumptions with supervised learning network. During training, the variation in image brightness, gradient and spatial smoothness are embedded in network. Our method is tested on both synthetic and real scenes. The experimental results show that employing the prior assumptions during training can obtain more detailed and smoothed flow fields and can improve the accuracy of optical flow estimation.https://ieeexplore.ieee.org/document/8425694/Optical flow estimationconvolutional neural networkssupervised learningprior assumptions
collection DOAJ
language English
format Article
sources DOAJ
author Xuezhi Xiang
Mingliang Zhai
Rongfang Zhang
Yulong Qiao
Abdulmotaleb El Saddik
spellingShingle Xuezhi Xiang
Mingliang Zhai
Rongfang Zhang
Yulong Qiao
Abdulmotaleb El Saddik
Deep Optical Flow Supervised Learning With Prior Assumptions
IEEE Access
Optical flow estimation
convolutional neural networks
supervised learning
prior assumptions
author_facet Xuezhi Xiang
Mingliang Zhai
Rongfang Zhang
Yulong Qiao
Abdulmotaleb El Saddik
author_sort Xuezhi Xiang
title Deep Optical Flow Supervised Learning With Prior Assumptions
title_short Deep Optical Flow Supervised Learning With Prior Assumptions
title_full Deep Optical Flow Supervised Learning With Prior Assumptions
title_fullStr Deep Optical Flow Supervised Learning With Prior Assumptions
title_full_unstemmed Deep Optical Flow Supervised Learning With Prior Assumptions
title_sort deep optical flow supervised learning with prior assumptions
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Traditional methods for estimating optical flow use variational model that includes data term and smoothness term, which can build a constraint relationship between two adjacent images and optical flow. However, most of them are too slow to be used in real-time applications. Recently, convolutional neural networks have been used in optical flow area successfully. Many current learning methods use large data sets that contain ground truth for network training, which can make use of prior knowledge to estimate optical flow directly. However, these methods overemphasize the factor of deep learning and ignore advantages of many traditional assumptions used in variational framework for optical flow estimation. In this paper, inspired by classical energy-based optical flow methods, we propose a novel approach for dense motion estimation, which combines traditional prior assumptions with supervised learning network. During training, the variation in image brightness, gradient and spatial smoothness are embedded in network. Our method is tested on both synthetic and real scenes. The experimental results show that employing the prior assumptions during training can obtain more detailed and smoothed flow fields and can improve the accuracy of optical flow estimation.
topic Optical flow estimation
convolutional neural networks
supervised learning
prior assumptions
url https://ieeexplore.ieee.org/document/8425694/
work_keys_str_mv AT xuezhixiang deepopticalflowsupervisedlearningwithpriorassumptions
AT mingliangzhai deepopticalflowsupervisedlearningwithpriorassumptions
AT rongfangzhang deepopticalflowsupervisedlearningwithpriorassumptions
AT yulongqiao deepopticalflowsupervisedlearningwithpriorassumptions
AT abdulmotalebelsaddik deepopticalflowsupervisedlearningwithpriorassumptions
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