An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC space

Abstract Rapidly obtaining accurate dense disparity maps has been the focus of stereo matching research. At present, approaches that achieve superior disparity maps require a large amount of computation, which is not suitable for practical applications. To address this issue, this paper proposes an...

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Main Authors: Shan Yang, Xinyue Lei, Zhenfeng Liu, Guorong Sui
Format: Article
Language:English
Published: Wiley 2021-06-01
Series:IET Image Processing
Online Access:https://doi.org/10.1049/ipr2.12140
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spelling doaj-9c19a8e3e05f4774889fe1b86371980a2021-07-14T13:20:42ZengWileyIET Image Processing1751-96591751-96672021-06-011581722173210.1049/ipr2.12140An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC spaceShan Yang0Xinyue Lei1Zhenfeng Liu2Guorong Sui3School of Optical‐Electrical and Computer Engineering University of Shanghai for Science and Technology No. 516 JunGong Road Shanghai ChinaSchool of Optical‐Electrical and Computer Engineering University of Shanghai for Science and Technology No. 516 JunGong Road Shanghai ChinaSchool of Optical‐Electrical and Computer Engineering University of Shanghai for Science and Technology No. 516 JunGong Road Shanghai ChinaSchool of Optical‐Electrical and Computer Engineering University of Shanghai for Science and Technology No. 516 JunGong Road Shanghai ChinaAbstract Rapidly obtaining accurate dense disparity maps has been the focus of stereo matching research. At present, approaches that achieve superior disparity maps require a large amount of computation, which is not suitable for practical applications. To address this issue, this paper proposes an efficient local matching method based on an adaptive exponentially weighted moving average filter and simple linear iterative clustering segmentation algorithm. First, an effective matching cost is introduced to adaptively integrate absolute intensity difference with Census transform, which is robust against texture free and luminance variate. Following this, during the cost aggregation, the exponentially weighted moving average filter and the SLIC segmentation are combined to handle the problems of computing consumption and adaptive expansion of the cost aggregation window. Finally, the dense disparity map is obtained by a winner‐takes‐all approach and disparity refinement. To demonstrate its efficiency and validity, the method is quantitatively tested and compared to existing approaches on the Middlebury benchmark. The results show that it has a non‐occlusion accuracy of 90.66% and an average runtime of 7.01 s on the 2014 Middlebury dataset. Compared with existing competitive methods, the proposed method achieves superior matching results with a lower time cost.https://doi.org/10.1049/ipr2.12140
collection DOAJ
language English
format Article
sources DOAJ
author Shan Yang
Xinyue Lei
Zhenfeng Liu
Guorong Sui
spellingShingle Shan Yang
Xinyue Lei
Zhenfeng Liu
Guorong Sui
An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC space
IET Image Processing
author_facet Shan Yang
Xinyue Lei
Zhenfeng Liu
Guorong Sui
author_sort Shan Yang
title An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC space
title_short An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC space
title_full An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC space
title_fullStr An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC space
title_full_unstemmed An efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in SLIC space
title_sort efficient local stereo matching method based on an adaptive exponentially weighted moving average filter in slic space
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-06-01
description Abstract Rapidly obtaining accurate dense disparity maps has been the focus of stereo matching research. At present, approaches that achieve superior disparity maps require a large amount of computation, which is not suitable for practical applications. To address this issue, this paper proposes an efficient local matching method based on an adaptive exponentially weighted moving average filter and simple linear iterative clustering segmentation algorithm. First, an effective matching cost is introduced to adaptively integrate absolute intensity difference with Census transform, which is robust against texture free and luminance variate. Following this, during the cost aggregation, the exponentially weighted moving average filter and the SLIC segmentation are combined to handle the problems of computing consumption and adaptive expansion of the cost aggregation window. Finally, the dense disparity map is obtained by a winner‐takes‐all approach and disparity refinement. To demonstrate its efficiency and validity, the method is quantitatively tested and compared to existing approaches on the Middlebury benchmark. The results show that it has a non‐occlusion accuracy of 90.66% and an average runtime of 7.01 s on the 2014 Middlebury dataset. Compared with existing competitive methods, the proposed method achieves superior matching results with a lower time cost.
url https://doi.org/10.1049/ipr2.12140
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