Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence Control

A depth estimation algorithm based on vergence vision using a mechanical joint attached to two cameras is proposed. A Gaussian pyramid template-matching approach is used to align the view of the slave camera to the fixation point of the master camera. The master camera uses an object detection algor...

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Main Authors: Abdulla Mohamed, Phil F. Culverhouse, Angelo Cangelosi, Chenguang Yang
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8502763/
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spelling doaj-3dc578ee70b94ab586364dd3e81a73432021-03-29T21:27:56ZengIEEEIEEE Access2169-35362018-01-016651996521110.1109/ACCESS.2018.28777218502763Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence ControlAbdulla Mohamed0https://orcid.org/0000-0001-7626-9346Phil F. Culverhouse1Angelo Cangelosi2Chenguang Yang3Centre for Robotics and Neural Systems, University of Plymouth, Plymouth, U.K.Centre for Robotics and Neural Systems, University of Plymouth, Plymouth, U.K.School of Computer Science, University of Manchester, Manchester, U.K.Zienkiewicz Centre for Computational Engineering, Swansea University, Swansea, U.K.A depth estimation algorithm based on vergence vision using a mechanical joint attached to two cameras is proposed. A Gaussian pyramid template-matching approach is used to align the view of the slave camera to the fixation point of the master camera. The master camera uses an object detection algorithm to find the target's centroid and centers it relative to the image coordinates. Then, the vergence movement of the slave camera is performed using a pyramid normalized cross-correlation algorithm. Simple geometric triangulation is employed to compute the depth of that target. This proposed method was implemented using an active binocular vision platform with five degrees of freedom where four degrees of freedom to control the pan and tilt independently, and one degree of freedom to control the baseline, which is the distance between the camera. This system was designed for implementation in agriculture harvesting applications. The Analysis of field trial results indicates a worst-case precision of a target tomatoes' depth to be ±1.32 cm at a depth of 85 cm.https://ieeexplore.ieee.org/document/8502763/Active stereo visionimage pyramidtemplate-matchingvergence visionharvesting
collection DOAJ
language English
format Article
sources DOAJ
author Abdulla Mohamed
Phil F. Culverhouse
Angelo Cangelosi
Chenguang Yang
spellingShingle Abdulla Mohamed
Phil F. Culverhouse
Angelo Cangelosi
Chenguang Yang
Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence Control
IEEE Access
Active stereo vision
image pyramid
template-matching
vergence vision
harvesting
author_facet Abdulla Mohamed
Phil F. Culverhouse
Angelo Cangelosi
Chenguang Yang
author_sort Abdulla Mohamed
title Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence Control
title_short Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence Control
title_full Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence Control
title_fullStr Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence Control
title_full_unstemmed Depth Estimation Based on Pyramid Normalized Cross-Correlation Algorithm for Vergence Control
title_sort depth estimation based on pyramid normalized cross-correlation algorithm for vergence control
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description A depth estimation algorithm based on vergence vision using a mechanical joint attached to two cameras is proposed. A Gaussian pyramid template-matching approach is used to align the view of the slave camera to the fixation point of the master camera. The master camera uses an object detection algorithm to find the target's centroid and centers it relative to the image coordinates. Then, the vergence movement of the slave camera is performed using a pyramid normalized cross-correlation algorithm. Simple geometric triangulation is employed to compute the depth of that target. This proposed method was implemented using an active binocular vision platform with five degrees of freedom where four degrees of freedom to control the pan and tilt independently, and one degree of freedom to control the baseline, which is the distance between the camera. This system was designed for implementation in agriculture harvesting applications. The Analysis of field trial results indicates a worst-case precision of a target tomatoes' depth to be ±1.32 cm at a depth of 85 cm.
topic Active stereo vision
image pyramid
template-matching
vergence vision
harvesting
url https://ieeexplore.ieee.org/document/8502763/
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