Korean Sign Language Recognition Using Transformer-Based Deep Neural Network

Author:

Shin Jungpil1ORCID,Musa Miah Abu Saleh1ORCID,Hasan Md. Al Mehedi2,Hirooka Koki1,Suzuki Kota1,Lee Hyoun-Sup3,Jang Si-Woong4

Affiliation:

1. School of Computer Science and Engineering, The University of Aizu, Aizuwakamatsu 965-8580, Fukushima, Japan

2. Department of Computer Science and Engineering, Rajshahi University of Engineering and Technology (RUET), Rajshahi 6204, Bangladesh

3. Department of Applied Software Engineering, Dongeui University, Busanjin-Gu, Busan 47340, Republic of Korea

4. Department of Computer Engineering, Dongeui University, Busanjin-Gu, Busan 47340, Republic of Korea

Abstract

Sign language recognition (SLR) is one of the crucial applications of the hand gesture recognition and computer vision research domain. There are many researchers who have been working to develop a hand gesture-based SLR application for English, Turkey, Arabic, and other sign languages. However, few studies have been conducted on Korean sign language classification because few KSL datasets are publicly available. In addition, the existing Korean sign language recognition work still faces challenges in being conducted efficiently because light illumination and background complexity are the major problems in this field. In the last decade, researchers successfully applied a vision-based transformer for recognizing sign language by extracting long-range dependency within the image. Moreover, there is a significant gap between the CNN and transformer in terms of the performance and efficiency of the model. In addition, we have not found a combination of CNN and transformer-based Korean sign language recognition models yet. To overcome the challenges, we proposed a convolution and transformer-based multi-branch network aiming to take advantage of the long-range dependencies computation of the transformer and local feature calculation of the CNN for sign language recognition. We extracted initial features with the grained model and then parallelly extracted features from the transformer and CNN. After concatenating the local and long-range dependencies features, a new classification module was applied for the classification. We evaluated the proposed model with a KSL benchmark dataset and our lab dataset, where our model achieved 89.00% accuracy for 77 label KSL dataset and 98.30% accuracy for the lab dataset. The higher performance proves that the proposed model can achieve a generalized property with considerably less computational cost.

Funder

MSIT (Ministry of Science and ICT), Korea

The University of Aizu

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

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