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DEVELOPMENT OF A MODEL FOR REAL-TIME RECOGNITION OF KAZAKH SIGN LANGUAGE USING MEDIAPIPE AND DEEP LEARNING METHODS

https://doi.org/10.55452/1998-6688-2025-22-4-10-22

Abstract

This article discusses the process of developing a Kazakh sign language recognition system using the MediaPipe platform. The platform allows for efficient real-time gesture recognition. The main focus is on creating models for gesture recognition, training neural networks, and integrating with the MediaPipe platform. One of the key aspects is achieving high accuracy and speed in gesture processing by using neural network architecture. The system was trained on a large dataset of annotated gestures, which significantly improved the recognition quality. For recognizing Kazakh sign language gestures, an LSTM neural network was used because it effectively works with time series and data sequences. The model was trained on 30 Kazakh sign language gestures, enabling the conversion of gestures into text in real-time. This approach greatly facilitates communication with people who have hearing and speech impairments and contributes to increased inclusivity. Additionally, a user-friendly web interface was developed, allowing easy integration of the neural network with applications for gesture recognition. One of the key aspects of the work is improving data annotation and processing methods to enhance recognition accuracy. The future development of the system includes expanding the sign language gesture database and integration with web applications. This will improve social inclusion for people with hearing and speech impairments and create a broad, accessible platform.

About the Authors

A. Yerimbetova
Institute of Information and Computational Technologies of the Committee of Science of the Ministry of Science and Higher Education of the Republic of Kazakhstan; Al-Farabi Kazakh National University; Eurasian Technological University
Kazakhstan

Cand. Tech. Sc., Associate Professor, PhD

Almaty



U. G. Berzhanova
Al-Farabi Kazakh National University
Kazakhstan

PhD student

Almaty



E. Daiyrbayeva
Institute of Information and Computational Technologies of the Committee of Science of the Ministry of Science and Higher Education of the Republic of Kazakhstan; Satbayev University
Kazakhstan

Senior Lecturer

Almaty



B. Sakenov
Institute of Information and Computational Technologies of the Committee of Science of the Ministry of Science and Higher Education of the Republic of Kazakhstan
Kazakhstan

Software engineer

Almaty



M. Sambetbayeva
L.N. Gumilyov Eurasian National University
Kazakhstan

PhD

Astana



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Review

For citations:


Yerimbetova A., Berzhanova U.G., Daiyrbayeva E., Sakenov B., Sambetbayeva M. DEVELOPMENT OF A MODEL FOR REAL-TIME RECOGNITION OF KAZAKH SIGN LANGUAGE USING MEDIAPIPE AND DEEP LEARNING METHODS. Herald of the Kazakh-British Technical University. 2025;22(4):10-22. (In Kazakh) https://doi.org/10.55452/1998-6688-2025-22-4-10-22

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ISSN 1998-6688 (Print)
ISSN 2959-8109 (Online)