SCIENTIFIC ASPECTS OF MODERN APPROACHES TO MACHINE TRANSLATION FOR SIGN LANGUAGE
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Published:2024-06-30
Issue:
Volume:
Page:41-54
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ISSN:2707-904X
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Container-title:Scientific Journal of Astana IT University
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language:
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Short-container-title:sjaitu
Author:
Nurgazina DanaORCID, Kudubayeva SauleORCID, Ismailov ArmanORCID
Abstract
Scientific research in the field of automated sign language translation represents a crucial stage in the development of technologies supporting the hearing-impaired and deaf communities. This article presents a comprehensive approach to addressing semantic and technical challenges associated with the uniqueness of sign language. The research goal is to create an innovative system that combines semantic analysis, sign synthesis, and facial mimicry for the most accurate conveyance of emotional context. The study focuses on the unique features of the Kazakh language and cultural contexts that influence sign communication. The research centers on the development of a semantic system capable of adequately interpreting metaphors, idioms, and classifier predicates of sign language. The three-dimensional nature of signs is analyzed, and a solution to the formal description problem is proposed. The article introduces a database, analysis algorithm, and a prototype 3D avatar capable of translating textual data into sign language. Special attention is given to the processing of idioms and variability in expressing emotions in sign language. Utilizing machine learning principles and computational linguistics algorithms, the authors present an integrated approach to sign language translation, considering linguistic, cultural, and emotional aspects. The proposed algorithms and formulas facilitate effective interaction between textual information and sign expression. The research results not only provide an overview of current challenges in automated sign language translation but also offer practical approaches to addressing them. The developed approach could be a key step towards creating more efficient communication systems for the hearing-impaired and deaf. Which in the future may solve numerous issues with Kazakh sign language.
Publisher
Astana IT University
Reference25 articles.
1. Abhishek, K.S., Qubeley, L.C.F., Ho, D., “Glove-based hand gesture recognition sign language translator using capacitive touch sensor” in 2016 IEEE International Conference on Electron Devices and Solid-State Circuits, EDSSC, 2016, pp. 334–337, 7785276, doi: https://doi.org/10.1109/EDSSC.2016.7785276 2. Amangeldy, N., Kudubayeva, S., Razakhova, B., Assel, M., Nazira, T., “COMPARATIVE ANALYSIS OF CLASSIFICATION METHODS OF THE DACTYL ALPHABET OF THE KAZAKH LANGUAGE” in Journal of Theoretical and Applied Information Technology, 2022, 100(19), pp. 5506–5513. 3. Nazyrova, A., Bekmanova, G., Omarbekova, A., Zulkhazhav, A., Yelibayeva, G. “The Use of a Morphological Analyzer in Assessing the Achievements of Learning Outcomes” in UBMK 2023 - Proceedings: 8th International Conference on Computer Science and Engineering, 2023, pp. 294–299 4. M. Ahmed et al., “Arabic sign language translator,” Journal of Computer Science, vol. 15, no. 10, pp. 1522–1537, 2019, doi:10.3844/jcssp.2019.1522.1537. 5. . Ramadhani, R.A., Putra, I.K.G.D., Sudarma, I.M., Giriantari, I.A.D., “Database of Indonesian Sign Systems” in 2018 International Conference on Smart Green Technology in Electrical and Information Systems: Smart Green Technology for Sustainable Living, ICSGTEIS 2018 - Proceeding, 2018, pp. 225–228, 8709137
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