Visual Facial Paralysis Detection using InceptionResNetV2
Facial paralysis, stemming from nerve issues, results in the inability to control facial muscles, leading to asymmetry and weakness. This condition not only affects appearance but also disrupts daily activities. Diagnosis is time-consuming and requires specialized expertise and equipment. To address...
Published in: | 2024 IEEE INTERNATIONAL CONFERENCE ON AUTOMATIC CONTROL AND INTELLIGENT SYSTEMS, I2CACIS 2024 |
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Format: | Proceedings Paper |
Language: | English |
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IEEE
2024
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Online Access: | https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-recordWOS:001308267400038 |
author |
Razlan Nurul Natasha; Aminuddin Raihah; Sabri Nurbaity; Ibrahim Shafaf; Shari Anis Amilah |
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Razlan Nurul Natasha; Aminuddin Raihah; Sabri Nurbaity; Ibrahim Shafaf; Shari Anis Amilah Visual Facial Paralysis Detection using InceptionResNetV2 Automation & Control Systems; Computer Science |
author_facet |
Razlan Nurul Natasha; Aminuddin Raihah; Sabri Nurbaity; Ibrahim Shafaf; Shari Anis Amilah |
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Razlan |
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Razlan, Nurul Natasha; Aminuddin, Raihah; Sabri, Nurbaity; Ibrahim, Shafaf; Shari, Anis Amilah Visual Facial Paralysis Detection using InceptionResNetV2 2024 IEEE INTERNATIONAL CONFERENCE ON AUTOMATIC CONTROL AND INTELLIGENT SYSTEMS, I2CACIS 2024 English Proceedings Paper Facial paralysis, stemming from nerve issues, results in the inability to control facial muscles, leading to asymmetry and weakness. This condition not only affects appearance but also disrupts daily activities. Diagnosis is time-consuming and requires specialized expertise and equipment. To address these challenges, a deep learning-based is proposed to analyze facial expressions and distinguish between normal and paralyzed states. The Facial Paralysis Detection leveraging InceptionResNetV2 by including preprocessing, augmentation, and classification on facial images. Evaluation on dataset of 2000 images of facial paralysis and normal face, these images are divided into training, validation, and testing sets with a ratio of 5:1:1, achieves 92.7% accuracy in distinguishing normal and paralyzed facial expressions, marking significant progress in healthcare diagnostics. Further experimentation will be carried out on alternative deep-learning structures in order to attain the highest precision. IEEE 2995-2840 2024 10.1109/I2CACIS61270.2024.10649871 Automation & Control Systems; Computer Science WOS:001308267400038 https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-recordWOS:001308267400038 |
title |
Visual Facial Paralysis Detection using InceptionResNetV2 |
title_short |
Visual Facial Paralysis Detection using InceptionResNetV2 |
title_full |
Visual Facial Paralysis Detection using InceptionResNetV2 |
title_fullStr |
Visual Facial Paralysis Detection using InceptionResNetV2 |
title_full_unstemmed |
Visual Facial Paralysis Detection using InceptionResNetV2 |
title_sort |
Visual Facial Paralysis Detection using InceptionResNetV2 |
container_title |
2024 IEEE INTERNATIONAL CONFERENCE ON AUTOMATIC CONTROL AND INTELLIGENT SYSTEMS, I2CACIS 2024 |
language |
English |
format |
Proceedings Paper |
description |
Facial paralysis, stemming from nerve issues, results in the inability to control facial muscles, leading to asymmetry and weakness. This condition not only affects appearance but also disrupts daily activities. Diagnosis is time-consuming and requires specialized expertise and equipment. To address these challenges, a deep learning-based is proposed to analyze facial expressions and distinguish between normal and paralyzed states. The Facial Paralysis Detection leveraging InceptionResNetV2 by including preprocessing, augmentation, and classification on facial images. Evaluation on dataset of 2000 images of facial paralysis and normal face, these images are divided into training, validation, and testing sets with a ratio of 5:1:1, achieves 92.7% accuracy in distinguishing normal and paralyzed facial expressions, marking significant progress in healthcare diagnostics. Further experimentation will be carried out on alternative deep-learning structures in order to attain the highest precision. |
publisher |
IEEE |
issn |
2995-2840 |
publishDate |
2024 |
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container_issue |
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doi_str_mv |
10.1109/I2CACIS61270.2024.10649871 |
topic |
Automation & Control Systems; Computer Science |
topic_facet |
Automation & Control Systems; Computer Science |
accesstype |
|
id |
WOS:001308267400038 |
url |
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-recordWOS:001308267400038 |
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wos |
collection |
Web of Science (WoS) |
_version_ |
1820775406619328512 |