Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition Tasks
This article presents the results of analyzing the behavior of the Cone Curvature shape descriptor (CC) in the task of recognition of facial expressions in 3D images. The CC descriptor is a representation of the 3D model computed from a set of waves modeling for each vertex of a polygon mesh. The 3D...
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Universidad Distrital Francisco José de Caldas
2015-08-01
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Online Access: | http://revistas.udistrital.edu.co/ojs/index.php/reving/article/view/8620 |
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doaj-0fb447b6c3784438afe44edc3f14189f2020-11-25T03:42:43ZspaUniversidad Distrital Francisco José de CaldasIngeniería 0121-750X2344-83932015-08-012027291Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition TasksJulián Severiano Rodriguez Acevedo0Flavio Augusto Prieto Ortiz1Universidad de San Buenaventura BogotáUniversidad Nacional de ColombiaThis article presents the results of analyzing the behavior of the Cone Curvature shape descriptor (CC) in the task of recognition of facial expressions in 3D images. The CC descriptor is a representation of the 3D model computed from a set of waves modeling for each vertex of a polygon mesh. The 3D Facial Expression Database (BU-3DFE) was used, which contains images with six facial expressions. With the use of the CC descriptor, the expressions were recognized in an average percentage of 76.67% with a neural network, and of 78.88% with a Bayesian classifier. By combining the CC descriptor with other descriptors such as DESIRE and Spherical Spin Image, it was achieved an average percentage of gesture recognition of 90.27%and 97.2 %, using the mentioned classifiers.http://revistas.udistrital.edu.co/ojs/index.php/reving/article/view/8620Descriptores de formareconocimiento facialVisión artificial |
collection |
DOAJ |
language |
Spanish |
format |
Article |
sources |
DOAJ |
author |
Julián Severiano Rodriguez Acevedo Flavio Augusto Prieto Ortiz |
spellingShingle |
Julián Severiano Rodriguez Acevedo Flavio Augusto Prieto Ortiz Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition Tasks Ingeniería Descriptores de forma reconocimiento facial Visión artificial |
author_facet |
Julián Severiano Rodriguez Acevedo Flavio Augusto Prieto Ortiz |
author_sort |
Julián Severiano Rodriguez Acevedo |
title |
Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition Tasks |
title_short |
Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition Tasks |
title_full |
Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition Tasks |
title_fullStr |
Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition Tasks |
title_full_unstemmed |
Analysis and Comparison of the Cone Curvature Descriptor in Facial Gesture Recognition Tasks |
title_sort |
analysis and comparison of the cone curvature descriptor in facial gesture recognition tasks |
publisher |
Universidad Distrital Francisco José de Caldas |
series |
Ingeniería |
issn |
0121-750X 2344-8393 |
publishDate |
2015-08-01 |
description |
This article presents the results of analyzing the behavior of the Cone Curvature shape
descriptor (CC) in the task of recognition of facial expressions in 3D images. The CC
descriptor is a representation of the 3D model computed from a set of waves modeling
for each vertex of a polygon mesh. The 3D Facial Expression Database (BU-3DFE) was
used, which contains images with six facial expressions. With the use of the CC descriptor,
the expressions were recognized in an average percentage of 76.67% with a neural
network, and of 78.88% with a Bayesian classifier. By combining the CC descriptor with
other descriptors such as DESIRE and Spherical Spin Image, it was achieved an average
percentage of gesture recognition of 90.27%and 97.2 %, using the mentioned classifiers. |
topic |
Descriptores de forma reconocimiento facial Visión artificial |
url |
http://revistas.udistrital.edu.co/ojs/index.php/reving/article/view/8620 |
work_keys_str_mv |
AT julianseverianorodriguezacevedo analysisandcomparisonoftheconecurvaturedescriptorinfacialgesturerecognitiontasks AT flavioaugustoprietoortiz analysisandcomparisonoftheconecurvaturedescriptorinfacialgesturerecognitiontasks |
_version_ |
1724523995973287936 |