Recognition of Radar-Based Deaf Sign Language Using Convolution Neural Network

Authors

  • M. D. H. Dol Malik School of Electrical Engineering, College of Engineering, Universiti Teknologi MARA, 40450 Shah Alam, Selangor, MALAYSIA
  • W. Mansor School of Electrical Engineering, College of Engineering, Universiti Teknologi MARA, 40450 Shah Alam, Selangor, MALAYSIA
  • N. E. Abdul Rashid Microwave Research Institute, Universiti Teknologi Mara, Shah Alam, 40450, MALAYSIA
  • M. Z. U. Rahman Department of Electronics and Communication Engineering, Koneru Lakshmaiah Education Foundation, Guntur-522502, A.P., INDIA

Keywords:

Radar, deep learning, Short-Time Fourier Transform (STFT), gestures, classification

Abstract

The difficulties in the communication between the deaf and normal people through sign language can be overcome by implementing deep learning in the gestures signal recognition. The use of the Convolution Neural Network (CNN) in distinguishing radar-based gesture signals of deaf sign language has not been investigated. This paper describes the recognition of gestures of deaf sign language using radar and CNN. Six gestures of deaf sign language were acquired from normal subjects using a radar system and processed. Short-time Fourier Transform was performed to extract the gestures features and the classification was performed using CNN. The performance of CNN was examined using two types of inputs; segmented and non-segmented spectrograms. The accuracy of recognising the gestures is higher (92.31%) using the non-segmented spectrograms compared to the segmented spectrogram. The radar-based deaf sign language could be recognised accurately using CNN without segmentation.

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Published

15-08-2023

Issue

Section

Special Issue 2023: MJWRT2022

How to Cite

Dol Malik, M. D. H. ., Mansor, W. ., Abdul Rashid, N. E., & Rahman, M. Z. U. . (2023). Recognition of Radar-Based Deaf Sign Language Using Convolution Neural Network. International Journal of Integrated Engineering, 15(3), 124-130. https://penerbit.uthm.edu.my/ojs/index.php/ijie/article/view/12881