3D object recognition with a linear time‐varying system of overlay layers
Abstract Object recognition is a challenging task in computer vision with numerous applications. The challenge is in selecting appropriate robust features with tolerable computing costs. Feature learning attempts to solve the feature extraction problem through a learning process using various sample...
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Online Access: | https://doi.org/10.1049/cvi2.12029 |
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doaj-c0e031af2177440a92d90e062fa14ba42021-07-09T15:26:15ZengWileyIET Computer Vision1751-96321751-96402021-08-0115538039110.1049/cvi2.120293D object recognition with a linear time‐varying system of overlay layersMohammad Sohrabi Nasrabadi0Reza Safabakhsh1Department of Computer Engineering Amirkabir University of Technology Tehran IranDepartment of Computer Engineering Amirkabir University of Technology Tehran IranAbstract Object recognition is a challenging task in computer vision with numerous applications. The challenge is in selecting appropriate robust features with tolerable computing costs. Feature learning attempts to solve the feature extraction problem through a learning process using various samples of the objects. This research proposes a two‐stage optimization framework to identify the structure of a first‐order linear non‐homogeneous difference equation which is a linear time‐varying system of overlay layers (LtvoL) that construct an image. The first stage consists of the determination of a finite set of impulses, called overlay layers, by the application of a genetic algorithm. The second stage defines the coefficients of the corresponding difference equation derived from L2 regularization. Classification of the test images is possible by a novel process exclusively designed for this model. Experiments on the Washington RGB‐D dataset and ETH‐80 show promising results which are comparable to those of state‐of‐the‐art methods for RGB‐D‐based object recognition.https://doi.org/10.1049/cvi2.12029 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mohammad Sohrabi Nasrabadi Reza Safabakhsh |
spellingShingle |
Mohammad Sohrabi Nasrabadi Reza Safabakhsh 3D object recognition with a linear time‐varying system of overlay layers IET Computer Vision |
author_facet |
Mohammad Sohrabi Nasrabadi Reza Safabakhsh |
author_sort |
Mohammad Sohrabi Nasrabadi |
title |
3D object recognition with a linear time‐varying system of overlay layers |
title_short |
3D object recognition with a linear time‐varying system of overlay layers |
title_full |
3D object recognition with a linear time‐varying system of overlay layers |
title_fullStr |
3D object recognition with a linear time‐varying system of overlay layers |
title_full_unstemmed |
3D object recognition with a linear time‐varying system of overlay layers |
title_sort |
3d object recognition with a linear time‐varying system of overlay layers |
publisher |
Wiley |
series |
IET Computer Vision |
issn |
1751-9632 1751-9640 |
publishDate |
2021-08-01 |
description |
Abstract Object recognition is a challenging task in computer vision with numerous applications. The challenge is in selecting appropriate robust features with tolerable computing costs. Feature learning attempts to solve the feature extraction problem through a learning process using various samples of the objects. This research proposes a two‐stage optimization framework to identify the structure of a first‐order linear non‐homogeneous difference equation which is a linear time‐varying system of overlay layers (LtvoL) that construct an image. The first stage consists of the determination of a finite set of impulses, called overlay layers, by the application of a genetic algorithm. The second stage defines the coefficients of the corresponding difference equation derived from L2 regularization. Classification of the test images is possible by a novel process exclusively designed for this model. Experiments on the Washington RGB‐D dataset and ETH‐80 show promising results which are comparable to those of state‐of‐the‐art methods for RGB‐D‐based object recognition. |
url |
https://doi.org/10.1049/cvi2.12029 |
work_keys_str_mv |
AT mohammadsohrabinasrabadi 3dobjectrecognitionwithalineartimevaryingsystemofoverlaylayers AT rezasafabakhsh 3dobjectrecognitionwithalineartimevaryingsystemofoverlaylayers |
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1721310202129547264 |