Extracting vsual micro-Doppler signatures from human lips motion using UoG radar sensing data for hearing aid applications
- ,
- Syed Aziz Shah,
- Yazeed Yasin Ghadi,
- Muhammad Zakir Khan,
- Jawad Ahmad,
- Syed Ikram Shah
- Coventry University,
- Al Ain University of Science and Technology,
- University of Glasgow,
- Edinburgh Napier University,
- National University of Sciences and Technology Pakistan
Open access
Sustainable Development Goals
- SDG 3 Good Health and Well
Abstract
This study proposes a secure and effective lips-reading system that can accurately detect lips movements, even when face masks are worn. The system utilizes radio frequency (RF) sensing and ultra-wideband (UWB) radar technology, which overcomes the challenges posed by traditional vision-based systems. By leveraging deep learning models, the system interprets lips and mouth movements and achieves an overall accuracy of 90% for both mask-on and mask-off scenarios. The study utilized a trusted dataset from the University of Glasgow (UoG), consisting of spectrograms of lips motions stating five vowels and a voiceless class from distinct participants. The cutting-edge deep learning algorithm, residual neural network (ResNet50), was used for the evaluation of the dataset and achieved an 87% accurate detection rate with a mask-on scenario, which is a 14% improvement compared to prior published work. The findings of this study contribute to the development of a robust lips-reading framework that can enhance communication accessibility in applications such as hearing aids, voice-controlled systems, biometrics, and more.
Publication Information
Output type
Original language
EnglishPages from-to (Number of pages)
Pages 22111-22118 (8 pages)Journal (Volume, Issue Number)
IEEE Sensors Journal (Volume 23, Issue 19)Publication milestones
- Published - 31/08/2023
Publication status
ISSN
1530-437XExternal Publication IDs
- Scopus: 85170572519
