International Journal of Advance Computational Engineering and Networking (IJACEN)
.
Follow Us On :
current issues
Volume-12,Issue-1  ( Jan, 2024 )
Past issues
  1. Volume-11,Issue-12  ( Dec, 2023 )
  2. Volume-11,Issue-11  ( Nov, 2023 )
  3. Volume-11,Issue-10  ( Oct, 2023 )
  4. Volume-11,Issue-9  ( Sep, 2023 )
  5. Volume-11,Issue-8  ( Aug, 2023 )
  6. Volume-11,Issue-7  ( Jul, 2023 )
  7. Volume-11,Issue-6  ( Jun, 2023 )
  8. Volume-11,Issue-5  ( May, 2023 )
  9. Volume-11,Issue-4  ( Apr, 2023 )
  10. Volume-11,Issue-3  ( Mar, 2023 )

Statistics report
May. 2024
Submitted Papers : 80
Accepted Papers : 10
Rejected Papers : 70
Acc. Perc : 12%
Issue Published : 133
Paper Published : 1552
No. of Authors : 4025
  Journal Paper


Paper Title :
Light Weight Network Architecture for Sign Language Recognition

Author :Borjiunn Hwang, Chiaowen Kao, Huihui Chen, Yuanchia Lin

Article Citation :Borjiunn Hwang ,Chiaowen Kao ,Huihui Chen ,Yuanchia Lin , (2023 ) " Light Weight Network Architecture for Sign Language Recognition " , International Journal of Advance Computational Engineering and Networking (IJACEN) , pp. 9-12, Volume-11,Issue-7

Abstract : Developing sign language recognitionsystems using deep learning models has become a prominent trend. However, the meaning conveyed by sign language gestures varies across different countries, making it difficult to share open sign language datasets. Additionally, the complex architecture of deep learning-based sign language recognition networks presents challenges in achieving real-time translation and localizing the technology for practical use. To address these challenges, this paper proposes a lightweight sign language recognition network architecture that optimizes the existing MobileNetV3+LSTM architecture. The goal is to reduce the network model size, decrease computational complexity, and maintain accuracy. The proposed model was evaluated using a self-collected dataset consisting of 14 types of Taiwanese daily life sign language gestures. Compared to other models, the proposed model achieved a 99.2% accuracy rate while reducing complexity by 72%. Keywords - Sign Language Recognition, Taiwanese Daily Life Sign Language, Lightweight, Edge Device.

Type : Research paper

Published : Volume-11,Issue-7


DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-19978   View Here

Copyright: © Institute of Research and Journals

| PDF |
Viewed - 20
| Published on 2023-11-09
   
   
IRAJ Other Journals
IJACEN updates
Paper Submission is open now for upcoming Issue.
The Conference World

JOURNAL SUPPORTED BY