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차세대 콘텐츠를 위한 AI 기술 활용 동향 및 전망
Trends and Prospects in the Application of AI Technology for Creative Contents 원문보기

전자통신동향분석 = Electronics and telecommunications trends, v.35 no.5, 2020년, pp.123 - 133  

홍성진 (지능형지식콘텐츠연구실) ,  이승욱 (CG) ,  윤민성 (VR) ,  박지영 (감성상호작용연구실) ,  이수웅 (콘텐츠인식연구실) ,  김아영 (콘텐츠실증연구실) ,  정일권 (차세대콘텐츠연구본부)

Abstract AI-Helper 아이콘AI-Helper

With the development of artificial intelligence (AI) and 5G technology, an ecosystem of digital content is gradually becoming intelligent, immersive, and convergent. However, there is not enough ultra-realistic content for the ecosystem. For ultra-realistic content services, creative content technol...

주제어

표/그림 (4)

참고문헌 (39)

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