Novel technique for isolated sign language based on fingerspelling recognition
© 2019 IEEE. Sign language is used by deaf and hard hearing people to exchange information between their own community and with other people. Fingerspelling recognition method from isolate sign language has attracted research interest in computer vision and human-computer interaction based on a nove...
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th-cmuir.6653943832-677152020-04-02T15:03:09Z Novel technique for isolated sign language based on fingerspelling recognition Ahmad Yahya Dawod Nopasit Chakpitak Computer Science Decision Sciences © 2019 IEEE. Sign language is used by deaf and hard hearing people to exchange information between their own community and with other people. Fingerspelling recognition method from isolate sign language has attracted research interest in computer vision and human-computer interaction based on a novel technique. The essential for real-time recognition of isolate sign language has grown with the emergence of better-capturing devices such as Kinect sensors. The purpose of this paper is to design a user independent framework for automatic recognition of American Sign Language which can recognize several one-handed dynamic isolated signs and interpreting their meaning. We built datasets as a raw data for alphabets (A-Z) or numbers (1-20) by used left-hand the 3D point (XL, YL, ZL) or switch by right-hand (XR, YR, ZR) centroid as one of contribution. The proposed approach was tested for gestures that involve left-hand or right-hand and was compared with other approach and gave better accuracy. Two machine learning methods are involved like Hidden Conditional Random Field (HCRF), and Random Decision Forest (RDF) for the classification part. The third contribution based on low lighting condition and cluttered background. In this research work is achieved for recognition accuracy over 99.7%. 2020-04-02T15:01:48Z 2020-04-02T15:01:48Z 2019-08-01 Conference Proceeding 2-s2.0-85081058786 10.1109/SKIMA47702.2019.8982452 https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85081058786&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/67715 |
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Computer Science Decision Sciences Ahmad Yahya Dawod Nopasit Chakpitak Novel technique for isolated sign language based on fingerspelling recognition |
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© 2019 IEEE. Sign language is used by deaf and hard hearing people to exchange information between their own community and with other people. Fingerspelling recognition method from isolate sign language has attracted research interest in computer vision and human-computer interaction based on a novel technique. The essential for real-time recognition of isolate sign language has grown with the emergence of better-capturing devices such as Kinect sensors. The purpose of this paper is to design a user independent framework for automatic recognition of American Sign Language which can recognize several one-handed dynamic isolated signs and interpreting their meaning. We built datasets as a raw data for alphabets (A-Z) or numbers (1-20) by used left-hand the 3D point (XL, YL, ZL) or switch by right-hand (XR, YR, ZR) centroid as one of contribution. The proposed approach was tested for gestures that involve left-hand or right-hand and was compared with other approach and gave better accuracy. Two machine learning methods are involved like Hidden Conditional Random Field (HCRF), and Random Decision Forest (RDF) for the classification part. The third contribution based on low lighting condition and cluttered background. In this research work is achieved for recognition accuracy over 99.7%. |
format |
Conference Proceeding |
author |
Ahmad Yahya Dawod Nopasit Chakpitak |
author_facet |
Ahmad Yahya Dawod Nopasit Chakpitak |
author_sort |
Ahmad Yahya Dawod |
title |
Novel technique for isolated sign language based on fingerspelling recognition |
title_short |
Novel technique for isolated sign language based on fingerspelling recognition |
title_full |
Novel technique for isolated sign language based on fingerspelling recognition |
title_fullStr |
Novel technique for isolated sign language based on fingerspelling recognition |
title_full_unstemmed |
Novel technique for isolated sign language based on fingerspelling recognition |
title_sort |
novel technique for isolated sign language based on fingerspelling recognition |
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2020 |
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https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85081058786&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/67715 |
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