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논문 리스트

2023
Korean Text to Gloss: Self-Supervised Learning approach
(사)한국스마트미디어학회
김진영 외 3명
논문정보
Publisher
스마트미디어저널
Issue Date
2023-02-28
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
12
Number
1
Start Page
32
End Page
46
DOI
ISSN
22871322
Abstract
Natural Language Processing (NLP) has grown tremendously in recent years. Typically, bilingual, and multilingual translation models have been deployed widely in machine translation and gained vast attention from the research community. On the contrary, few studies have focused on translating between spoken and sign languages, especially non-English languages. Prior works on Sign Language Translation (SLT) have shown that a mid-level sign gloss representation enhances translation performance. Therefore, this study presents a new large-scale Korean sign language dataset, the Museum-Commentary Korean Sign Gloss (MCKSG) dataset, including 3828 pairs of Korean sentences and their corresponding sign glosses used in Museum-Commentary contexts. In addition, we propose a translation framework based on self-supervised learning, where the pretext task is a text-to-text from a Korean sentence to its back-translation versions, then the pre-trained network will be fine-tuned on the MCKSG dataset. Using self-supervised learning help to overcome the drawback of a shortage of sign language data. Through experimental results, our proposed model outperforms a baseline BERT model by 6.22%.

저자 정보

이름 소속
김진영 지능전자컴퓨터공학과