Facial Expression Image Dataset for Computer Vision Algorithms

<p>The dataset for this project is characterised by photos of individual human emotion expression and these photos are taken with the help of both digital camera and a mobile phone camera from different angles, posture, background, light exposure, and distances. This task might look and sound...

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محفوظ في:
التفاصيل البيبلوغرافية
المؤلف الرئيسي: Ali Alameer (12549592) (author)
مؤلفون آخرون: Odunmolorun Osonuga (13874782) (author)
منشور في: 2025
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author Ali Alameer (12549592)
author2 Odunmolorun Osonuga (13874782)
author2_role author
author_facet Ali Alameer (12549592)
Odunmolorun Osonuga (13874782)
author_role author
dc.creator.none.fl_str_mv Ali Alameer (12549592)
Odunmolorun Osonuga (13874782)
dc.date.none.fl_str_mv 2025-04-29T09:16:35Z
dc.identifier.none.fl_str_mv 10.17866/rd.salford.21220835.v2
dc.relation.none.fl_str_mv https://figshare.com/articles/dataset/Facial_Expression_Image_Dataset_for_Computer_Vision_Algorithms/21220835
dc.rights.none.fl_str_mv CC BY 4.0
info:eu-repo/semantics/openAccess
dc.subject.none.fl_str_mv Computer vision
facial expression database
facial expression analysis
computer vision algorithms
computer vision-based framework
deep learning dataset
dc.title.none.fl_str_mv Facial Expression Image Dataset for Computer Vision Algorithms
dc.type.none.fl_str_mv Dataset
info:eu-repo/semantics/publishedVersion
dataset
description <p>The dataset for this project is characterised by photos of individual human emotion expression and these photos are taken with the help of both digital camera and a mobile phone camera from different angles, posture, background, light exposure, and distances. This task might look and sound very easy but there were some challenges encountered along the process which are reviewed below:</p> <p>1) People constraint</p> <p>One of the major challenges faced during this project is getting people to participate in the image capturing process as school was on vacation, and other individuals gotten around the environment were not willing to let their images be captured for personal and security reasons even after explaining the notion behind the project which is mainly for academic research purposes. Due to this challenge, we resorted to capturing the images of the researcher and just a few other willing individuals.</p> <p>2) Time constraint</p> <p>As with all deep learning projects, the more data available the more accuracy and less error the result will produce. At the initial stage of the project, it was agreed to have 10 emotional expression photos each of at least 50 persons and we can increase the number of photos for more accurate results but due to the constraint in time of this project an agreement was later made to just capture the researcher and a few other people that are willing and available. These photos were taken for just two types of human emotion expression that is, “happy” and “sad” faces due to time constraint too. To expand our work further on this project (as future works and recommendations), photos of other facial expression such as anger, contempt, disgust, fright, and surprise can be included if time permits.</p> <p>3) The approved facial emotions capture.</p> <p>It was agreed to capture as many angles and posture of just two facial emotions for this project with at least 10 images emotional expression per individual, but due to time and people constraints few persons were captured with as many postures as possible for this project which is stated below:</p> <p>Ø Happy faces: 65 images</p> <p>Ø Sad faces: 62 images</p> <p>There are many other types of facial emotions and again to expand our project in the future, we can include all the other types of the facial emotions if time permits, and people are readily available.</p> <p>4) Expand Further.</p> <p>This project can be improved furthermore with so many abilities, again due to the limitation of time given to this project, these improvements can be implemented later as future works. In simple words, this project is to detect/predict real-time human emotion which involves creating a model that can detect the percentage confidence of any happy or sad facial image. The higher the percentage confidence the more accurate the facial fed into the model.</p> <p>5) Other Questions</p> <p>Can the model be reproducible? the supposed response to this question should be YES. If and only if the model will be fed with the proper data (images) such as images of other types of emotional expression.</p>
eu_rights_str_mv openAccess
id Manara_74bb2bbd997abfb309cf7e4819ed5c61
identifier_str_mv 10.17866/rd.salford.21220835.v2
network_acronym_str Manara
network_name_str ManaraRepo
oai_identifier_str oai:figshare.com:article/21220835
publishDate 2025
repository.mail.fl_str_mv
repository.name.fl_str_mv
repository_id_str
rights_invalid_str_mv CC BY 4.0
spelling Facial Expression Image Dataset for Computer Vision AlgorithmsAli Alameer (12549592)Odunmolorun Osonuga (13874782)Computer visionfacial expression databasefacial expression analysiscomputer vision algorithmscomputer vision-based frameworkdeep learning dataset<p>The dataset for this project is characterised by photos of individual human emotion expression and these photos are taken with the help of both digital camera and a mobile phone camera from different angles, posture, background, light exposure, and distances. This task might look and sound very easy but there were some challenges encountered along the process which are reviewed below:</p> <p>1) People constraint</p> <p>One of the major challenges faced during this project is getting people to participate in the image capturing process as school was on vacation, and other individuals gotten around the environment were not willing to let their images be captured for personal and security reasons even after explaining the notion behind the project which is mainly for academic research purposes. Due to this challenge, we resorted to capturing the images of the researcher and just a few other willing individuals.</p> <p>2) Time constraint</p> <p>As with all deep learning projects, the more data available the more accuracy and less error the result will produce. At the initial stage of the project, it was agreed to have 10 emotional expression photos each of at least 50 persons and we can increase the number of photos for more accurate results but due to the constraint in time of this project an agreement was later made to just capture the researcher and a few other people that are willing and available. These photos were taken for just two types of human emotion expression that is, “happy” and “sad” faces due to time constraint too. To expand our work further on this project (as future works and recommendations), photos of other facial expression such as anger, contempt, disgust, fright, and surprise can be included if time permits.</p> <p>3) The approved facial emotions capture.</p> <p>It was agreed to capture as many angles and posture of just two facial emotions for this project with at least 10 images emotional expression per individual, but due to time and people constraints few persons were captured with as many postures as possible for this project which is stated below:</p> <p>Ø Happy faces: 65 images</p> <p>Ø Sad faces: 62 images</p> <p>There are many other types of facial emotions and again to expand our project in the future, we can include all the other types of the facial emotions if time permits, and people are readily available.</p> <p>4) Expand Further.</p> <p>This project can be improved furthermore with so many abilities, again due to the limitation of time given to this project, these improvements can be implemented later as future works. In simple words, this project is to detect/predict real-time human emotion which involves creating a model that can detect the percentage confidence of any happy or sad facial image. The higher the percentage confidence the more accurate the facial fed into the model.</p> <p>5) Other Questions</p> <p>Can the model be reproducible? the supposed response to this question should be YES. If and only if the model will be fed with the proper data (images) such as images of other types of emotional expression.</p>2025-04-29T09:16:35ZDatasetinfo:eu-repo/semantics/publishedVersiondataset10.17866/rd.salford.21220835.v2https://figshare.com/articles/dataset/Facial_Expression_Image_Dataset_for_Computer_Vision_Algorithms/21220835CC BY 4.0info:eu-repo/semantics/openAccessoai:figshare.com:article/212208352025-04-29T09:16:35Z
spellingShingle Facial Expression Image Dataset for Computer Vision Algorithms
Ali Alameer (12549592)
Computer vision
facial expression database
facial expression analysis
computer vision algorithms
computer vision-based framework
deep learning dataset
status_str publishedVersion
title Facial Expression Image Dataset for Computer Vision Algorithms
title_full Facial Expression Image Dataset for Computer Vision Algorithms
title_fullStr Facial Expression Image Dataset for Computer Vision Algorithms
title_full_unstemmed Facial Expression Image Dataset for Computer Vision Algorithms
title_short Facial Expression Image Dataset for Computer Vision Algorithms
title_sort Facial Expression Image Dataset for Computer Vision Algorithms
topic Computer vision
facial expression database
facial expression analysis
computer vision algorithms
computer vision-based framework
deep learning dataset