SVCV: segmentation volume combined with cost volume for stereo matching

Stereo matching between binocular stereo images is fundamental to many computer vision tasks, such as three‐dimensional (3D) reconstruction and robot navigation. Various structures of real 3D scenes lead stereo matching to be an old yet still challenging problem. In this study, the authors proposed...

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Published in:IET Computer Vision
Main Authors: Hongmei Zhu, Jihao Yin, Ding Yuan
Format: Article
Language:English
Published: Wiley 2017-12-01
Subjects:
Online Access:https://doi.org/10.1049/iet-cvi.2016.0446
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author Hongmei Zhu
Jihao Yin
Ding Yuan
author_facet Hongmei Zhu
Jihao Yin
Ding Yuan
author_sort Hongmei Zhu
collection DOAJ
container_title IET Computer Vision
description Stereo matching between binocular stereo images is fundamental to many computer vision tasks, such as three‐dimensional (3D) reconstruction and robot navigation. Various structures of real 3D scenes lead stereo matching to be an old yet still challenging problem. In this study, the authors proposed a novel adaptive support weights technique which exploits the hierarchical information provided by multilevel segmentation to preserve the robustness to imaging conditions and spatial proximity in cost aggregation. Besides, a generalisable cost refinement strategy is designed to remove the matching ambiguity in large weakly textured regions. The proposed strategy utilises both the fluctuation of the filtered cost volume and the colour information to further improve the matching accuracy. Experimental results of 50 stereo images demonstrate the effectiveness and efficiency of the proposed method. Furthermore, a systematic evaluation is developed to assess the conventional steps in local stereo methods and then reliable suggestions are given to the beginners and researchers outside the stereo matching field.
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spelling doaj-art-4e5572ef6e024daaae3480d8d79ba5452025-08-19T20:42:53ZengWileyIET Computer Vision1751-96321751-96402017-12-0111873374310.1049/iet-cvi.2016.0446SVCV: segmentation volume combined with cost volume for stereo matchingHongmei Zhu0Jihao Yin1Ding Yuan2School of AstronauticsBeihang UniversityHaidian DistrictBeijing100191People's Republic of ChinaSchool of AstronauticsBeihang UniversityHaidian DistrictBeijing100191People's Republic of ChinaSchool of AstronauticsBeihang UniversityHaidian DistrictBeijing100191People's Republic of ChinaStereo matching between binocular stereo images is fundamental to many computer vision tasks, such as three‐dimensional (3D) reconstruction and robot navigation. Various structures of real 3D scenes lead stereo matching to be an old yet still challenging problem. In this study, the authors proposed a novel adaptive support weights technique which exploits the hierarchical information provided by multilevel segmentation to preserve the robustness to imaging conditions and spatial proximity in cost aggregation. Besides, a generalisable cost refinement strategy is designed to remove the matching ambiguity in large weakly textured regions. The proposed strategy utilises both the fluctuation of the filtered cost volume and the colour information to further improve the matching accuracy. Experimental results of 50 stereo images demonstrate the effectiveness and efficiency of the proposed method. Furthermore, a systematic evaluation is developed to assess the conventional steps in local stereo methods and then reliable suggestions are given to the beginners and researchers outside the stereo matching field.https://doi.org/10.1049/iet-cvi.2016.0446SVCVsegmentation volumestereo matchingbinocular stereo imagescomputer visionnovel adaptive support weights technique
spellingShingle Hongmei Zhu
Jihao Yin
Ding Yuan
SVCV: segmentation volume combined with cost volume for stereo matching
SVCV
segmentation volume
stereo matching
binocular stereo images
computer vision
novel adaptive support weights technique
title SVCV: segmentation volume combined with cost volume for stereo matching
title_full SVCV: segmentation volume combined with cost volume for stereo matching
title_fullStr SVCV: segmentation volume combined with cost volume for stereo matching
title_full_unstemmed SVCV: segmentation volume combined with cost volume for stereo matching
title_short SVCV: segmentation volume combined with cost volume for stereo matching
title_sort svcv segmentation volume combined with cost volume for stereo matching
topic SVCV
segmentation volume
stereo matching
binocular stereo images
computer vision
novel adaptive support weights technique
url https://doi.org/10.1049/iet-cvi.2016.0446
work_keys_str_mv AT hongmeizhu svcvsegmentationvolumecombinedwithcostvolumeforstereomatching
AT jihaoyin svcvsegmentationvolumecombinedwithcostvolumeforstereomatching
AT dingyuan svcvsegmentationvolumecombinedwithcostvolumeforstereomatching