Facial expression recognition in Filipino sign language

Filipino Sign Language (FSL) is a mode of communication for the Deaf in the Philippines. Though it has two components, namely manual and non-manual signals, most research works focus on manual signals only. However, non-manual signals play a significant role in Sign Language Recognition (SLR) as it...

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Main Author: Rivera, Joanna Pauline C.
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Language:English
Published: Animo Repository 2017
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Online Access:https://animorepository.dlsu.edu.ph/etd_masteral/5558
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_masteral-123962024-09-16T02:16:01Z Facial expression recognition in Filipino sign language Rivera, Joanna Pauline C. Filipino Sign Language (FSL) is a mode of communication for the Deaf in the Philippines. Though it has two components, namely manual and non-manual signals, most research works focus on manual signals only. However, non-manual signals play a significant role in Sign Language Recognition (SLR) as it can be mixed freely with manual signals, often changing the meaning of the signs. Internationally, there have been numerous researches regarding non-manual signals. However, most of these focused on the semantic and lexical functions only. This study focused on recognizing facial expressions in FSL that convey Types of Sentences (i.e. question, statement, and exclamation), Degrees of Adjectives (i.e. absence, presence, and high presence), and Emotions (i.e happy, fear/surprise, sad, and disgust/anger). The data were collected using Microsoft Kinect for Windows 2.0. After the data annotation, co-occurrences of the different categories were discovered. Thus, individual experiments were conducted for each category. Based from the results of extensive experiments, head rotation angles and Animation Units of different facial features from peak facial expressions are not enough to represent each category of the facial expressions in FSL. Adding classes from other categories as features and reducing features through Genetic Algorithm generally improved the performances significantly. Based from the observations of the raw data, some important features are not represented. Thus, further research on the data representation is necessary to improve the performances. 2017-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_masteral/5558 Master's Theses English Animo Repository Sign language Philippine Sign Language Facial expression--Philippines
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Sign language
Philippine Sign Language
Facial expression--Philippines
spellingShingle Sign language
Philippine Sign Language
Facial expression--Philippines
Rivera, Joanna Pauline C.
Facial expression recognition in Filipino sign language
description Filipino Sign Language (FSL) is a mode of communication for the Deaf in the Philippines. Though it has two components, namely manual and non-manual signals, most research works focus on manual signals only. However, non-manual signals play a significant role in Sign Language Recognition (SLR) as it can be mixed freely with manual signals, often changing the meaning of the signs. Internationally, there have been numerous researches regarding non-manual signals. However, most of these focused on the semantic and lexical functions only. This study focused on recognizing facial expressions in FSL that convey Types of Sentences (i.e. question, statement, and exclamation), Degrees of Adjectives (i.e. absence, presence, and high presence), and Emotions (i.e happy, fear/surprise, sad, and disgust/anger). The data were collected using Microsoft Kinect for Windows 2.0. After the data annotation, co-occurrences of the different categories were discovered. Thus, individual experiments were conducted for each category. Based from the results of extensive experiments, head rotation angles and Animation Units of different facial features from peak facial expressions are not enough to represent each category of the facial expressions in FSL. Adding classes from other categories as features and reducing features through Genetic Algorithm generally improved the performances significantly. Based from the observations of the raw data, some important features are not represented. Thus, further research on the data representation is necessary to improve the performances.
format text
author Rivera, Joanna Pauline C.
author_facet Rivera, Joanna Pauline C.
author_sort Rivera, Joanna Pauline C.
title Facial expression recognition in Filipino sign language
title_short Facial expression recognition in Filipino sign language
title_full Facial expression recognition in Filipino sign language
title_fullStr Facial expression recognition in Filipino sign language
title_full_unstemmed Facial expression recognition in Filipino sign language
title_sort facial expression recognition in filipino sign language
publisher Animo Repository
publishDate 2017
url https://animorepository.dlsu.edu.ph/etd_masteral/5558
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