An Empirical Study of Exhaustive Matching for Improving Motion Field Estimation
Optical flow is defined as the motion field of pixels between two consecutive images. Traditionally, in order to estimate pixel motion field (or optical flow), an energy model is proposed. This energy model is composed of (i) a data term and (ii) a regularization term. The data term is an optical fl...
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doaj-19792181bfd5454f8616ad942b28b9a62020-11-24T22:18:47ZengMDPI AGInformation2078-24892018-12-0191232010.3390/info9120320info9120320An Empirical Study of Exhaustive Matching for Improving Motion Field EstimationVanel Lazcano0Núcleo de Matemática, Física y Estadística, Facultad de Estudios Interdisciplinarios, Universidad Mayor, Santiago 7500628, ChileOptical flow is defined as the motion field of pixels between two consecutive images. Traditionally, in order to estimate pixel motion field (or optical flow), an energy model is proposed. This energy model is composed of (i) a data term and (ii) a regularization term. The data term is an optical flow error estimation and the regularization term imposes spatial smoothness. Traditional <i>variational</i> models use a linearization in the data term. This linearized version of data term fails when the displacement of the object is larger than its own size. Recently, the precision of the optical flow method has been increased due to the use of additional information, obtained from correspondences computed between two images obtained by different methods such as SIFT, deep-matching, and exhaustive search. This work presents an empirical study in order to evaluate different strategies for locating exhaustive correspondences improving flow estimation. We considered a different location for matching random locations, uniform locations, and locations on maximum gradient magnitude. Additionally, we tested the combination of large and medium gradients with uniform locations. We evaluated our methodology in the MPI-Sintel database, which represents the state-of-the-art evaluation databases. Our results in MPI-Sintel show that our proposal outperforms classical methods such as Horn-Schunk, TV-L1, and LDOF, and our method performs similar to MDP-Flow.https://www.mdpi.com/2078-2489/9/12/320motion estimationlarge displacementcolor and gradient constancy constraint |
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DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Vanel Lazcano |
spellingShingle |
Vanel Lazcano An Empirical Study of Exhaustive Matching for Improving Motion Field Estimation Information motion estimation large displacement color and gradient constancy constraint |
author_facet |
Vanel Lazcano |
author_sort |
Vanel Lazcano |
title |
An Empirical Study of Exhaustive Matching for Improving Motion Field Estimation |
title_short |
An Empirical Study of Exhaustive Matching for Improving Motion Field Estimation |
title_full |
An Empirical Study of Exhaustive Matching for Improving Motion Field Estimation |
title_fullStr |
An Empirical Study of Exhaustive Matching for Improving Motion Field Estimation |
title_full_unstemmed |
An Empirical Study of Exhaustive Matching for Improving Motion Field Estimation |
title_sort |
empirical study of exhaustive matching for improving motion field estimation |
publisher |
MDPI AG |
series |
Information |
issn |
2078-2489 |
publishDate |
2018-12-01 |
description |
Optical flow is defined as the motion field of pixels between two consecutive images. Traditionally, in order to estimate pixel motion field (or optical flow), an energy model is proposed. This energy model is composed of (i) a data term and (ii) a regularization term. The data term is an optical flow error estimation and the regularization term imposes spatial smoothness. Traditional <i>variational</i> models use a linearization in the data term. This linearized version of data term fails when the displacement of the object is larger than its own size. Recently, the precision of the optical flow method has been increased due to the use of additional information, obtained from correspondences computed between two images obtained by different methods such as SIFT, deep-matching, and exhaustive search. This work presents an empirical study in order to evaluate different strategies for locating exhaustive correspondences improving flow estimation. We considered a different location for matching random locations, uniform locations, and locations on maximum gradient magnitude. Additionally, we tested the combination of large and medium gradients with uniform locations. We evaluated our methodology in the MPI-Sintel database, which represents the state-of-the-art evaluation databases. Our results in MPI-Sintel show that our proposal outperforms classical methods such as Horn-Schunk, TV-L1, and LDOF, and our method performs similar to MDP-Flow. |
topic |
motion estimation large displacement color and gradient constancy constraint |
url |
https://www.mdpi.com/2078-2489/9/12/320 |
work_keys_str_mv |
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