Facial expression recognition using 3D facial feature distances
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Publisher
Springer-Verlag Berlin
Access Rights
info:eu-repo/semantics/closedAccess
Abstract
In this paper, we propose a novel approach for facial expression analysis and recognition. The proposed approach relies on the distance vectors retrieved from 3D distribution of facial feature points to classify universal facial expressions. Neural network architecture is employed as a classifier to recognize the facial expressions from a distance vector obtained from 3D facial feature locations. Facial expressions such as anger, sadness, surprise, joy, disgust, fear and neutral are successfully recognized with an average recognition rate of 91.3%. The highest recognition rate reaches to 98.3% in the recognition of surprise.
Description
4th International Conference on Image Analysis and Recognition -- AUG 22-24, 2007 -- Montreal, CANADA
Keywords
3D facial expression analysis, facial feature points, neural networks
Journal or Series
Image Analysis and Recognition, Proceedings
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Scopus Q Value
Volume
4633










