Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm

Bibliographic Details
Main Author: M, Rajeshwari
Publication Date: 2025
Format: Article
Language: eng
Source: INFOCOMP: Jornal de Ciência da Computação
Download full: https://infocomp.dcc.ufla.br/index.php/infocomp/article/view/3149
Summary: Facial expression is one of the most natural and a non-verbal way in expressing human emotions and interactions. Assessing the well-being via communication are the first signs that transmits the emotional state. This domain attracts more of research and are interested by the modality in the specificity of the domain. With a suspect able increase in the AI in domains, gaining a reasonable implementation of DL with its advanced ability in case of Facial Expression Detection known as FER. Existing studies adapting ML approaches, in the FER, have deployed in adequate laybacks such as high computational time, inability to deal with large datasets, and fail in bringing timely accurate ranges of predictions. In consideration to these aspects, the proposed study admits the system design, in aim of FER comprising feature extraction and the classification of the emotions using the DL models. These are done using the proposed approach uses Deep Multi-level feature extraction using ResNet50, which is more appropriate in optimal and exact feature selection mechanism. Followed by Weight-normalized XG-Boost classifier for the process of classifying various emotional expressions. This is adapted in aim, of maintaining the gradient descent step and admitting using larger dataset for learning. The input images are collected from the FER13, dataset consisting 28,709 sample image data and the test data consists of about 3,589 image data. These are initially pre-processed for better accuracy rates during feature extraction and classifications. The complete model in effective FER is evaluated using the performance metrics comprising Accuracy, Recall. F1-score and the precision rates. This analysis of the performance will aid in affirming the overall efficacy of the proposed system.   
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spelling Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost AlgorithmFacial expression is one of the most natural and a non-verbal way in expressing human emotions and interactions. Assessing the well-being via communication are the first signs that transmits the emotional state. This domain attracts more of research and are interested by the modality in the specificity of the domain. With a suspect able increase in the AI in domains, gaining a reasonable implementation of DL with its advanced ability in case of Facial Expression Detection known as FER. Existing studies adapting ML approaches, in the FER, have deployed in adequate laybacks such as high computational time, inability to deal with large datasets, and fail in bringing timely accurate ranges of predictions. In consideration to these aspects, the proposed study admits the system design, in aim of FER comprising feature extraction and the classification of the emotions using the DL models. These are done using the proposed approach uses Deep Multi-level feature extraction using ResNet50, which is more appropriate in optimal and exact feature selection mechanism. Followed by Weight-normalized XG-Boost classifier for the process of classifying various emotional expressions. This is adapted in aim, of maintaining the gradient descent step and admitting using larger dataset for learning. The input images are collected from the FER13, dataset consisting 28,709 sample image data and the test data consists of about 3,589 image data. These are initially pre-processed for better accuracy rates during feature extraction and classifications. The complete model in effective FER is evaluated using the performance metrics comprising Accuracy, Recall. F1-score and the precision rates. This analysis of the performance will aid in affirming the overall efficacy of the proposed system.   Editora da UFLA2025-01-30info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdfhttps://infocomp.dcc.ufla.br/index.php/infocomp/article/view/3149INFOCOMP Journal of Computer Science; Vol. 23 No. 2 (2024): December1982-33631807-4545reponame:INFOCOMP: Jornal de Ciência da Computaçãoinstname:Universidade Federal de Lavras (UFLA)instacron:UFLAenghttps://infocomp.dcc.ufla.br/index.php/infocomp/article/view/3149/621Copyright (c) 2025 Rajeshwari Minfo:eu-repo/semantics/openAccessM, Rajeshwari2025-01-30T11:59:42Zoai:infocomp.dcc.ufla.br:article/3149Revistahttps://infocomp.dcc.ufla.br/index.php/infocompPUBhttps://infocomp.dcc.ufla.br/index.php/infocomp/oaiinfocomp@dcc.ufla.br||apfreire@dcc.ufla.br1982-33631807-4545opendoar:2025-01-30T11:59:42INFOCOMP: Jornal de Ciência da Computação - Universidade Federal de Lavras (UFLA)false
dc.title.none.fl_str_mv Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
title Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
spellingShingle Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
M, Rajeshwari
title_short Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
title_full Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
title_fullStr Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
title_full_unstemmed Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
title_sort Transforming Facial Expression Prediction: Amplifying Accuracy with ResNet50 Features and Innovated XG-Boost Algorithm
author M, Rajeshwari
author_facet M, Rajeshwari
author_role author
dc.contributor.author.fl_str_mv M, Rajeshwari
description Facial expression is one of the most natural and a non-verbal way in expressing human emotions and interactions. Assessing the well-being via communication are the first signs that transmits the emotional state. This domain attracts more of research and are interested by the modality in the specificity of the domain. With a suspect able increase in the AI in domains, gaining a reasonable implementation of DL with its advanced ability in case of Facial Expression Detection known as FER. Existing studies adapting ML approaches, in the FER, have deployed in adequate laybacks such as high computational time, inability to deal with large datasets, and fail in bringing timely accurate ranges of predictions. In consideration to these aspects, the proposed study admits the system design, in aim of FER comprising feature extraction and the classification of the emotions using the DL models. These are done using the proposed approach uses Deep Multi-level feature extraction using ResNet50, which is more appropriate in optimal and exact feature selection mechanism. Followed by Weight-normalized XG-Boost classifier for the process of classifying various emotional expressions. This is adapted in aim, of maintaining the gradient descent step and admitting using larger dataset for learning. The input images are collected from the FER13, dataset consisting 28,709 sample image data and the test data consists of about 3,589 image data. These are initially pre-processed for better accuracy rates during feature extraction and classifications. The complete model in effective FER is evaluated using the performance metrics comprising Accuracy, Recall. F1-score and the precision rates. This analysis of the performance will aid in affirming the overall efficacy of the proposed system.   
publishDate 2025
dc.date.none.fl_str_mv 2025-01-30
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://infocomp.dcc.ufla.br/index.php/infocomp/article/view/3149
url https://infocomp.dcc.ufla.br/index.php/infocomp/article/view/3149
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv https://infocomp.dcc.ufla.br/index.php/infocomp/article/view/3149/621
dc.rights.driver.fl_str_mv Copyright (c) 2025 Rajeshwari M
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2025 Rajeshwari M
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Editora da UFLA
publisher.none.fl_str_mv Editora da UFLA
dc.source.none.fl_str_mv INFOCOMP Journal of Computer Science; Vol. 23 No. 2 (2024): December
1982-3363
1807-4545
reponame:INFOCOMP: Jornal de Ciência da Computação
instname:Universidade Federal de Lavras (UFLA)
instacron:UFLA
instname_str Universidade Federal de Lavras (UFLA)
instacron_str UFLA
institution UFLA
reponame_str INFOCOMP: Jornal de Ciência da Computação
collection INFOCOMP: Jornal de Ciência da Computação
repository.name.fl_str_mv INFOCOMP: Jornal de Ciência da Computação - Universidade Federal de Lavras (UFLA)
repository.mail.fl_str_mv infocomp@dcc.ufla.br||apfreire@dcc.ufla.br
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