Isolated Sign Language Recognition Through Integrating Pose Data and Motion History Images

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Date

2024

Authors

Baykan, Ömer Kaan

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Publisher

Peerj Inc

Open Access Color

GOLD

Green Open Access

Yes

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No
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Average
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Top 10%

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Abstract

This article presents an innovative approach for the task of isolated sign language recognition (SLR); this approach centers on the integration of pose data with motion history images (MHIs) derived from these data. Our research combines spatial information obtained from body, hand, and face poses with the comprehensive details provided by three-channel MHI data concerning the temporal dynamics of the sign. Particularly, our developed finger pose-based MHI (FP-MHI) feature significantly enhances the recognition success, capturing the nuances of finger movements and gestures, unlike existing approaches in SLR. This feature improves the accuracy and reliability of SLR systems by more accurately capturing the fine details and richness of sign language. Additionally, we enhance the overall model accuracy by predicting missing pose data through linear interpolation. Our study, based on the randomized leaky rectified linear unit (RReLU) enhanced ResNet-18 model, successfully handles the interaction between manual and non-manual features through the fusion of extracted features and classification with a support vector machine (SVM). This innovative integration demonstrates competitive and superior results compared to current methodologies in the field of SLR across various datasets, including BosphorusSign22k-general, BosphorusSign22k, LSA64, and GSL, in our experiments.

Description

Keywords

Sign language recognition, Deep learning, Motion history image, Feature fusion, Feature fusion, Artificial Intelligence, Electronic computers. Computer science, Deep learning, QA75.5-76.95, Motion history image, Sign language recognition

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Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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WoS Q

Q2

Scopus Q

Q1
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Source

Peerj computer science

Volume

10

Issue

Start Page

e2054

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Scopus : 3

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Mendeley Readers : 8

SCOPUS™ Citations

2

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Web of Science™ Citations

2

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