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수어 동작 키포인트 중심의 시공간적 정보를 강화한 Sign2Gloss2Text 기반의 수어 번역
Sign2Gloss2Text-based Sign Language Translation with Enhanced Spatial-temporal Information Centered on Sign Language Movement Keypoints 원문보기

멀티미디어학회논문지 = Journal of Korea Multimedia Society, v.25 no.10, 2022년, pp.1535 - 1545  

김민채 (Graduate School of Information, Yonsei University) ,  김정은 (Dept. of Artificial Intelligence, Graduate School, Yonsei University) ,  김하영 (Graduate School of Information, Yonsei University)

Abstract AI-Helper 아이콘AI-Helper

Sign language has completely different meaning depending on the direction of the hand or the change of facial expression even with the same gesture. In this respect, it is crucial to capture the spatial-temporal structure information of each movement. However, sign language translation studies based...

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표/그림 (5)

참고문헌 (31)

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