Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN Architectures

Automatic pain recognition from facial expressions is a challenging problem that has attracted a significant attention from the research community. This article provides a comprehensive analysis on the topic by comparing some popular and Off-the-Shell CNN (Convolutional Neural Network) architectures...

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Main Authors: Safaa El Morabit, Atika Rivenq, Mohammed-En-nadhir Zighem, Abdenour Hadid, Abdeldjalil Ouahabi, Abdelmalik Taleb-Ahmed
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/10/16/1926
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spelling doaj-ee2d8fd8c4144ce8bcb8b3b7682324de2021-08-26T13:41:32ZengMDPI AGElectronics2079-92922021-08-01101926192610.3390/electronics10161926Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN ArchitecturesSafaa El Morabit0Atika Rivenq1Mohammed-En-nadhir Zighem2Abdenour Hadid3Abdeldjalil Ouahabi4Abdelmalik Taleb-Ahmed5IEMN DOAE, UMR CNRS 8520, Polytechnic University Hauts-de-France, 59300 Valenciennes, FranceIEMN DOAE, UMR CNRS 8520, Polytechnic University Hauts-de-France, 59300 Valenciennes, FranceIEMN DOAE, UMR CNRS 8520, Polytechnic University Hauts-de-France, 59300 Valenciennes, FranceIEMN DOAE, UMR CNRS 8520, Polytechnic University Hauts-de-France, 59300 Valenciennes, FrancePolytech Tours, Imaging and Brain, INSERM U930, University of Tours, 37200 Tours, FranceIEMN DOAE, UMR CNRS 8520, Polytechnic University Hauts-de-France, 59300 Valenciennes, FranceAutomatic pain recognition from facial expressions is a challenging problem that has attracted a significant attention from the research community. This article provides a comprehensive analysis on the topic by comparing some popular and Off-the-Shell CNN (Convolutional Neural Network) architectures, including MobileNet, GoogleNet, ResNeXt-50, ResNet18, and DenseNet-161. We use these networks in two distinct modes: stand alone mode or feature extractor mode. In stand alone mode, the models (i.e., the networks) are used for directly estimating the pain. In feature extractor mode, the “values” of the middle layers are extracted and used as inputs to classifiers, such as SVR (Support Vector Regression) and RFR (Random Forest Regression). We perform extensive experiments on the benchmarking and publicly available database called UNBC-McMaster Shoulder Pain. The obtained results are interesting as they give valuable insights into the usefulness of the hidden CNN layers for automatic pain estimation.https://www.mdpi.com/2079-9292/10/16/1926automatic pain recognitionfacial expressionsOff-the-Shell CNN architectures
collection DOAJ
language English
format Article
sources DOAJ
author Safaa El Morabit
Atika Rivenq
Mohammed-En-nadhir Zighem
Abdenour Hadid
Abdeldjalil Ouahabi
Abdelmalik Taleb-Ahmed
spellingShingle Safaa El Morabit
Atika Rivenq
Mohammed-En-nadhir Zighem
Abdenour Hadid
Abdeldjalil Ouahabi
Abdelmalik Taleb-Ahmed
Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN Architectures
Electronics
automatic pain recognition
facial expressions
Off-the-Shell CNN architectures
author_facet Safaa El Morabit
Atika Rivenq
Mohammed-En-nadhir Zighem
Abdenour Hadid
Abdeldjalil Ouahabi
Abdelmalik Taleb-Ahmed
author_sort Safaa El Morabit
title Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN Architectures
title_short Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN Architectures
title_full Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN Architectures
title_fullStr Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN Architectures
title_full_unstemmed Automatic Pain Estimation from Facial Expressions: A Comparative Analysis Using Off-the-Shelf CNN Architectures
title_sort automatic pain estimation from facial expressions: a comparative analysis using off-the-shelf cnn architectures
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2021-08-01
description Automatic pain recognition from facial expressions is a challenging problem that has attracted a significant attention from the research community. This article provides a comprehensive analysis on the topic by comparing some popular and Off-the-Shell CNN (Convolutional Neural Network) architectures, including MobileNet, GoogleNet, ResNeXt-50, ResNet18, and DenseNet-161. We use these networks in two distinct modes: stand alone mode or feature extractor mode. In stand alone mode, the models (i.e., the networks) are used for directly estimating the pain. In feature extractor mode, the “values” of the middle layers are extracted and used as inputs to classifiers, such as SVR (Support Vector Regression) and RFR (Random Forest Regression). We perform extensive experiments on the benchmarking and publicly available database called UNBC-McMaster Shoulder Pain. The obtained results are interesting as they give valuable insights into the usefulness of the hidden CNN layers for automatic pain estimation.
topic automatic pain recognition
facial expressions
Off-the-Shell CNN architectures
url https://www.mdpi.com/2079-9292/10/16/1926
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