Design and Implementation of Multilingual Sign Language Recognition System
Student: Ajibola Ebenezer Sanya (Project, 2025)
Department of Computer and Information Science
Bamidele Olumilua University of Edu. Science and Tech. Ikere Ekiti, Ekiti State
Abstract
The Multilingual Sign Language Recognition System addresses
communication barriers faced by the hearing and speech-impaired community,
especially in multilingual contexts. By leveraging advanced deep learning
techniques, the YOLO algorithm for real-time gesture detection and TensorFlow
for classification, this system focuses on recognizing hand gestures across multiple
sign languages such as ASL and BSL. The study achieved a detection accuracy of
99%. Despite limitations like dependency on high-performance hardware and
exclusion of facial expressions, the project demonstrates significant potential as
an assistive technology. Recommendations include expanding dataset diversity,
integrating additional recognition capabilities, and optimizing for edge devices to
enhance accessibility and scalability.
Keywords
For the full publication, please contact the author directly at: sanya.0664@bouesti.edu.ng
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Institutions
- Landmark University, Omu-Aran, Kwara State 1
- Lead City University, Ibadan, Oyo State 1
- Lens Polytechnic, offa, Kwara State. 215
- Madonna University, Elele, Rivers State 20
- Madonna University, Okija, Anambra State 2
- Mcpherson University, Seriki Sotayo, Ogun State 1
- Michael and Cecilia Ibru University, Owhrode, Delta State 1
- Michael Okpara University of Agriculture, Umudike 43
- Michael Otedola Col of Primary Educ. Epe, Lagos (affl To University of Ibadan) 8
- Modibbo Adama University, Yola, Adamawa State 15