Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated Camera

An automatic recognition framework for human facial expressions from a monocular video with an uncalibrated camera is proposed. The expression characteristics are first acquired from a kind of deformable template, similar to a facial muscle distribution. After associated regularization, the time seq...

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Main Authors: Yu Tao, Zou Jian-Hua, Song Qin-Bao
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:ITM Web of Conferences
Online Access:https://doi.org/10.1051/itmconf/20171203042
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spelling doaj-0508b2a9b8e74bd79ff077dd28ec72172021-02-02T02:12:53ZengEDP SciencesITM Web of Conferences2271-20972017-01-01120304210.1051/itmconf/20171203042itmconf_ita2017_03042Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated CameraYu TaoZou Jian-HuaSong Qin-Bao0Research Institute of Computer Software & Theory, Department of Computer Science & Technology, School of Electronics & Information Engineering, Xi’an Jiaotong UniversityAn automatic recognition framework for human facial expressions from a monocular video with an uncalibrated camera is proposed. The expression characteristics are first acquired from a kind of deformable template, similar to a facial muscle distribution. After associated regularization, the time sequences from the trait changes in space-time under complete expressional production are then arranged line by line in a matrix. Next, the matrix dimensionality is reduced by a method of manifold learning of neighborhood-preserving embedding. Finally, the refined matrix containing the expression trait information is recognized by a classifier that integrates the hidden conditional random field (HCRF) and support vector machine (SVM). In an experiment using the Cohn–Kanade database, the proposed method showed a comparatively higher recognition rate than the individual HCRF or SVM methods in direct recognition from two-dimensional human face traits. Moreover, the proposed method was shown to be more robust than the typical Kotsia method because the former contains more structural characteristics of the data to be classified in space-timehttps://doi.org/10.1051/itmconf/20171203042
collection DOAJ
language English
format Article
sources DOAJ
author Yu Tao
Zou Jian-Hua
Song Qin-Bao
spellingShingle Yu Tao
Zou Jian-Hua
Song Qin-Bao
Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated Camera
ITM Web of Conferences
author_facet Yu Tao
Zou Jian-Hua
Song Qin-Bao
author_sort Yu Tao
title Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated Camera
title_short Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated Camera
title_full Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated Camera
title_fullStr Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated Camera
title_full_unstemmed Automatic Human Facial Expression Recognition Based on Integrated Classifier From Monocular Video with Uncalibrated Camera
title_sort automatic human facial expression recognition based on integrated classifier from monocular video with uncalibrated camera
publisher EDP Sciences
series ITM Web of Conferences
issn 2271-2097
publishDate 2017-01-01
description An automatic recognition framework for human facial expressions from a monocular video with an uncalibrated camera is proposed. The expression characteristics are first acquired from a kind of deformable template, similar to a facial muscle distribution. After associated regularization, the time sequences from the trait changes in space-time under complete expressional production are then arranged line by line in a matrix. Next, the matrix dimensionality is reduced by a method of manifold learning of neighborhood-preserving embedding. Finally, the refined matrix containing the expression trait information is recognized by a classifier that integrates the hidden conditional random field (HCRF) and support vector machine (SVM). In an experiment using the Cohn–Kanade database, the proposed method showed a comparatively higher recognition rate than the individual HCRF or SVM methods in direct recognition from two-dimensional human face traits. Moreover, the proposed method was shown to be more robust than the typical Kotsia method because the former contains more structural characteristics of the data to be classified in space-time
url https://doi.org/10.1051/itmconf/20171203042
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AT songqinbao automatichumanfacialexpressionrecognitionbasedonintegratedclassifierfrommonocularvideowithuncalibratedcamera
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