American sign language recognition and training method with recurrent neural network
Though American sign language (ASL) has gained recognition from the American society, few ASL applications have been developed with educational purposes. Those designed with real-time sign recognition systems are also lacking. Leap motion controller facilitates the real-time and accurate recognition...
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sg-ntu-dr.10356-1606792022-08-01T01:35:12Z American sign language recognition and training method with recurrent neural network Lee, C. K. M. Ng, Kam K. H. Chen, Chun-Hsien Lau, H. C. W. Chung, S. Y. Tsoi, Tiffany School of Mechanical and Aerospace Engineering Engineering::Mechanical engineering American Sign Language Leap Motion Controller Though American sign language (ASL) has gained recognition from the American society, few ASL applications have been developed with educational purposes. Those designed with real-time sign recognition systems are also lacking. Leap motion controller facilitates the real-time and accurate recognition of ASL signs. It allows an opportunity for designing a learning application with a real-time sign recognition system that seeks to improve the effectiveness of ASL learning. The project proposes an ASL learning application prototype. The application would be a whack-a-mole game with a real-time sign recognition system embedded. Since both static and dynamic signs (J, Z) exist in ASL alphabets, Long-Short Term Memory Recurrent Neural Network with k-Nearest-Neighbour method is adopted as the classification method is based on handling of sequences of input. Characteristics such as sphere radius, angles between fingers and distance between finger positions are extracted as input for the classification model. The model is trained with 2600 samples, 100 samples taken for each alphabet. The experimental results revealed that the recognition rate for 26 ASL alphabets yields an average of 99.44% accuracy rate and 91.82% in 5-fold cross-validation with the use of leap motion controller. 2022-08-01T01:35:12Z 2022-08-01T01:35:12Z 2021 Journal Article Lee, C. K. M., Ng, K. K. H., Chen, C., Lau, H. C. W., Chung, S. Y. & Tsoi, T. (2021). American sign language recognition and training method with recurrent neural network. Expert Systems With Applications, 167, 114403-. https://dx.doi.org/10.1016/j.eswa.2020.114403 0957-4174 https://hdl.handle.net/10356/160679 10.1016/j.eswa.2020.114403 2-s2.0-85097552443 167 114403 en Expert Systems with Applications © 2020 Elsevier Ltd. All rights reserved. |
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Engineering::Mechanical engineering American Sign Language Leap Motion Controller Lee, C. K. M. Ng, Kam K. H. Chen, Chun-Hsien Lau, H. C. W. Chung, S. Y. Tsoi, Tiffany American sign language recognition and training method with recurrent neural network |
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Though American sign language (ASL) has gained recognition from the American society, few ASL applications have been developed with educational purposes. Those designed with real-time sign recognition systems are also lacking. Leap motion controller facilitates the real-time and accurate recognition of ASL signs. It allows an opportunity for designing a learning application with a real-time sign recognition system that seeks to improve the effectiveness of ASL learning. The project proposes an ASL learning application prototype. The application would be a whack-a-mole game with a real-time sign recognition system embedded. Since both static and dynamic signs (J, Z) exist in ASL alphabets, Long-Short Term Memory Recurrent Neural Network with k-Nearest-Neighbour method is adopted as the classification method is based on handling of sequences of input. Characteristics such as sphere radius, angles between fingers and distance between finger positions are extracted as input for the classification model. The model is trained with 2600 samples, 100 samples taken for each alphabet. The experimental results revealed that the recognition rate for 26 ASL alphabets yields an average of 99.44% accuracy rate and 91.82% in 5-fold cross-validation with the use of leap motion controller. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Lee, C. K. M. Ng, Kam K. H. Chen, Chun-Hsien Lau, H. C. W. Chung, S. Y. Tsoi, Tiffany |
format |
Article |
author |
Lee, C. K. M. Ng, Kam K. H. Chen, Chun-Hsien Lau, H. C. W. Chung, S. Y. Tsoi, Tiffany |
author_sort |
Lee, C. K. M. |
title |
American sign language recognition and training method with recurrent neural network |
title_short |
American sign language recognition and training method with recurrent neural network |
title_full |
American sign language recognition and training method with recurrent neural network |
title_fullStr |
American sign language recognition and training method with recurrent neural network |
title_full_unstemmed |
American sign language recognition and training method with recurrent neural network |
title_sort |
american sign language recognition and training method with recurrent neural network |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/160679 |
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1743119532223889408 |