Design and Implementation of a 3D Korean Sign Language Learning System Using Pseudo-Hologram
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초록

Sign language is a three-dimensional (3D) visual language that conveys meaning through hand positions, shapes, and movements. Traditional sign language education methods, such as textbooks and videos, often fail to capture the spatial characteristics of sign language, leading to limitations in learning accuracy and comprehension. To address this, we propose a 3D Korean Sign Language Learning System that leverages pseudo-hologram technology and hand gesture recognition using Leap Motion sensors. The proposed system provides learners with an immersive 3D learning experience by visualizing sign language gestures through pseudo-holographic displays. A Recurrent Neural Network (RNN) model, combined with Diffusion Convolutional Recurrent Neural Networks (DCRNNs) and ProbSparse Attention mechanisms, is used to recognize hand gestures from both hands in real-time. The system is implemented using a server–client architecture to ensure scalability and flexibility, allowing efficient updates to the gesture recognition model without modifying the client application. Experimental results show that the system enhances learners’ ability to accurately perform and comprehend sign language gestures. Additionally, a usability study demonstrated that 3D visualization significantly improves learning motivation and user engagement compared to traditional 2D learning methods.

키워드

hand gesture recognitionlearningpseudo-hologramsign languagethree-dimensional visualization
제목
Design and Implementation of a 3D Korean Sign Language Learning System Using Pseudo-Hologram
저자
Kim, NaeunChoe, HaeYeongLee, SukwonKang, Changgu
DOI
10.3390/app15168962
발행일
2025-08
유형
Article
저널명
Applied Sciences-basel
15
16