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                                       Details for article 4 of 21 found articles
 
 
  Application of Improved AAM and Probabilistic Neural network to Facial Expression Recognition
 
 
Title: Application of Improved AAM and Probabilistic Neural network to Facial Expression Recognition
Author: N. Neggaz
M. Besnassi
A. Benyettou
Appeared in: Journal of applied sciences
Paging: Volume 10 (2010) nr. 15 pages 1572-1579
Year: 2010
Contents: Automatic facial expression analysis is an interesting and challenging problem and impacts important applications in many areas such as human–computer interaction. This study discusses the application of improved Active Appearance Model (AAM) based on evolutionary feature extraction in combination with Probabilistic Neural Network (PNN) for recognition of six different facial expressions from still pictures of the human face. Experimental results demonstrate an average expression recognition accuracy of 96% on the JAFFE database, which outperforms the rate of all other reported methods on the same database. The present study, therefore, proves the feasibility of computer vision based on facial expression recognition for practical applications like surveillance and human computer interaction.
Publisher: Asian Network for Scientific Information (provided by DOAJ)
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details for article 4 of 21 found articles
 
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