Specialised global methods for binocular and trinocular stereo matching
dc.contributor.advisor
Fisher, Robert
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dc.contributor.advisor
Vijayakumar, Sethu
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dc.contributor.author
Horna Carranza, Luis Alberto
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dc.contributor.sponsor
other
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dc.date.accessioned
2018-03-28T09:58:36Z
dc.date.available
2018-03-28T09:58:36Z
dc.date.issued
2017-07-07
dc.description.abstract
The problem of estimating depth from two or more images is a fundamental problem
in computer vision, which is commonly referred as to stereo matching. The applications
of stereo matching range from 3D reconstruction to autonomous robot navigation.
Stereo matching is particularly attractive for applications in real life because of its simplicity
and low cost, especially compared to costly laser range finders/scanners, such
as for the case of 3D reconstruction. However, stereo matching has its very unique
problems like convergence issues in the optimisation methods, and challenges to find
matches accurately due to changes in lighting conditions, occluded areas, noisy images,
etc. It is precisely because of these challenges that stereo matching continues to
be a very active field of research.
In this thesis we develop a binocular stereo matching algorithm that works with
rectified images (i.e. scan lines in two images are aligned) to find a real valued displacement
(i.e. disparity) that best matches two pixels. To accomplish this our research
has developed techniques to efficiently explore a 3D space, compare potential matches,
and an inference algorithm to assign the optimal disparity to each pixel in the image.
The proposed approach is also extended to the trinocular case. In particular, the
trinocular extension deals with a binocular set of images captured at the same time and
a third image displaced in time. This approach is referred as to t +1 trinocular stereo
matching, and poses the challenge of recovering camera motion, which is addressed
by a novel technique we call baseline recovery.
We have extensively validated our binocular and trinocular algorithms using the
well known KITTI and Middlebury data sets. The performance of our algorithms is
consistent across different data sets, and its performance is among the top performers
in the KITTI and Middlebury datasets. The time-stamped results of our algorithms as
reported in this thesis can be found at:
• LCU on Middlebury V2 (https://web.archive.org/web/20150106200339/http://vision.middlebury.
edu/stereo/eval/).
• LCU on Middlebury V3 (https://web.archive.org/web/20150510133811/http://vision.middlebury.
edu/stereo/eval3/).
• LPU on Middlebury V3 (https://web.archive.org/web/20161210064827/http://vision.middlebury.
edu/stereo/eval3/).
• LPU on KITTI 2012 (https://web.archive.org/web/20161106202908/http://cvlibs.net/datasets/
kitti/eval_stereo_flow.php?benchmark=stereo).
• LPU on KITTI 2015 (https://web.archive.org/web/20161010184245/http://cvlibs.net/datasets/
kitti/eval_scene_flow.php?benchmark=stereo).
• TBR on KITTI 2012 (https://web.archive.org/web/20161230052942/http://cvlibs.net/datasets/
kitti/eval_stereo_flow.php?benchmark=stereo).
en
dc.identifier.uri
http://hdl.handle.net/1842/29017
dc.language.iso
en
dc.publisher
The University of Edinburgh
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dc.relation.hasversion
3D plane labeling stereo matching with content aware adaptive windows. L. Horna and R.B Fisher. International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications (VISAPP), 2017
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dc.relation.hasversion
Plane labeling trinocular stereo matching with baseline recovery. L. Horna and R.B Fisher. International Conference on Machine Vision Applications, 2017
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dc.subject
depth estimation
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dc.subject
stereo matching
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dc.subject
binocular stereo matching algorithm
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dc.subject
3D
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dc.subject
trinocular
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dc.subject
trinocular algorithms
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dc.subject
binocular algorithms
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dc.title
Specialised global methods for binocular and trinocular stereo matching
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dc.type
Thesis or Dissertation
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dc.type.qualificationlevel
Doctoral
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dc.type.qualificationname
PhD Doctor of Philosophy
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