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عنوان
Automated Recognition of Facial Affect Using Deep Neural Networks

پدید آورنده
Hasani, Behzad

موضوع
Artificial intelligence,Biometrics,Computer science,Facial recognition technology,Neural networks

رده

کتابخانه
Center and Library of Islamic Studies in European Languages

محل استقرار
استان: Qom ـ شهر: Qom

Center and Library of Islamic Studies in European Languages

تماس با کتابخانه : 32910706-025

NATIONAL BIBLIOGRAPHY NUMBER

Number
TL53847

LANGUAGE OF THE ITEM

.Language of Text, Soundtrack etc
انگلیسی

TITLE AND STATEMENT OF RESPONSIBILITY

Title Proper
Automated Recognition of Facial Affect Using Deep Neural Networks
General Material Designation
[Thesis]
First Statement of Responsibility
Hasani, Behzad
Subsequent Statement of Responsibility
Mahoor, Mohammad H

.PUBLICATION, DISTRIBUTION, ETC

Name of Publisher, Distributor, etc.
University of Denver
Date of Publication, Distribution, etc.
2020

GENERAL NOTES

Text of Note
159 p.

DISSERTATION (THESIS) NOTE

Dissertation or thesis details and type of degree
Ph.D.
Body granting the degree
University of Denver
Text preceding or following the note
2020

SUMMARY OR ABSTRACT

Text of Note
Automated Facial Expression Recognition (FER) has been a topic of study in the field of computer vision and machine learning for decades. In spite of efforts made to improve the accuracy of FER systems, existing methods still are not generalizable and accurate enough for use in real-world applications. Many of the traditional methods use hand-crafted (a.k.a. engineered) features for representation of facial images. However, these methods often require rigorous hyper-parameter tuning to achieve favorable results. Recently, Deep Neural Networks (DNNs) have shown to outperform traditional methods in visual object recognition. DNNs require huge data as well as powerful computing units for training generalizable and robust classification models. The problem of automated FER especially with images captured in the wild setting is even more challenging since there are subtle differences between various facial emotions. This dissertation presents the recent efforts I made in 1) creating a large annotated database of facial expressions, 2) developing novel DNN-based methods for automated recognition of facial expressions described by two main models of affect, the categorical model and the dimensional model, and 3) developing a robust face detection and emotion recognition system based on our state-of-the-art DNN and trained on our proposed database of facial expressions. Existing annotated databases of facial expressions in the wild are small and mostly cover discrete emotions (aka the categorical model). There are very limited annotated facial databases for affective computing in the continuous dimensional model (e.g., valence and arousal). To address these needs, we developed the largest database of human affect (called AffectNet). For AffectNet, we collected, annotated, and prepared for public distribution a new database of facial emotions in the wild. AffectNet contains more than 1,000,000 facial images from the Internet by querying three major search engines using 1250 emotion related keywords in six different languages. About half of the retrieved images were manually annotated for the presence of seven discrete facial expressions and the intensity of valence and arousal. AffectNet is by far the largest database of facial expression, valence, and arousal in the wild enabling research in automated facial expression recognition in two different emotion models. This dissertation also presents three major and novel DNN-based methods for automated facial affect estimation. The methods are: 1) 3D Inception-ResNet (3DIR), 2) BReG-Net, and 3) BReG-NeXt architectures. These methods modify the residual unit -proposed in the original ResNets- with different operations. Comprehensive experiments are conducted to evaluate the performance of each of the proposed methods as well as their efficiency using Affect and few other facial expression databases. Our final proposed method -BReG-NeXt- achieves state-of-the-art results in predicting both dimensional and categorical models of affect with significantly fewer training parameters and less number of FLOPs. Additionally, a robust face detection network is developed based on the BReG-NeXt architecture which leverages AffectNet's diverse training data and BReG-NeXt's efficient feature extraction powers.

UNCONTROLLED SUBJECT TERMS

Subject Term
Artificial intelligence
Subject Term
Biometrics
Subject Term
Computer science
Subject Term
Facial recognition technology
Subject Term
Neural networks

PERSONAL NAME - PRIMARY RESPONSIBILITY

Hasani, Behzad

PERSONAL NAME - SECONDARY RESPONSIBILITY

Mahoor, Mohammad H

CORPORATE BODY NAME - SECONDARY RESPONSIBILITY

University of Denver

ELECTRONIC LOCATION AND ACCESS

Electronic name
 مطالعه متن کتاب 

p

[Thesis]
276903

a
Y

Proposal/Bug Report

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