http://chineseinput.net/에서 pinyin(병음)방식으로 중국어를 변환할 수 있습니다.
변환된 중국어를 복사하여 사용하시면 됩니다.
권오욱,최승권,노윤형,김영길,박전규,이윤근,Kwon, O.W.,Choi, S.K.,Roh, Y.H.,Kim, Y.K.,Park, J.G.,Lee, Y.K. 한국전자통신연구원 2015 전자통신동향분석 Vol.30 No.4
모바일 혁명 빅데이터와 사물인터넷 시대에 접어들면서 인간의 음성과 말로 다양한 장치와 서비스를 제어하고 이용하는 것은 당연시되고 있다. 음성대화처리 기술은 인간 중심의 자유로운 발화를 인식하고 이해 및 처리하는 방향으로 발전하게 될 것이다. 본고에서는 현재 음성대화처리 기술 국내외 기술 및 산업 동향과 지식재산권 동향을 살펴보고, 인간 중심의 자유발화형 음성대화처리 기술 개념과 발전방향에 대해 기술한다.
권오욱,홍택규,황금하,노윤형,최승권,김화연,김영길,이윤근,Kwon, O.W.,Hong, T.G.,Huang, J.X.,Roh, Y.H.,Choi, S.K.,Kim, H.Y.,Kim, Y.K.,Lee, Y.K. 한국전자통신연구원 2019 전자통신동향분석 Vol.34 No.4
In this study, we introduce trends in neural-network-based deep learning research applied to dialogue systems. Recently, end-to-end trainable goal-oriented dialogue systems using long short-term memory, sequence-to-sequence models, among others, have been studied to overcome the difficulties of domain adaptation and error recognition and recovery in traditional pipeline goal-oriented dialogue systems. In addition, some research has been conducted on applying reinforcement learning to end-to-end trainable goal-oriented dialogue systems to learn dialogue strategies that do not appear in training corpora. Recent neural network models for end-to-end trainable chit-chat systems have been improved using dialogue context as well as personal and topic information to produce a more natural human conversation. Unlike previous studies that have applied different approaches to goal-oriented dialogue systems and chit-chat systems respectively, recent studies have attempted to apply end-to-end trainable approaches based on deep neural networks in common to them. Acquiring dialogue corpora for training is now necessary. Therefore, future research will focus on easily and cheaply acquiring dialogue corpora and training with small annotated dialogue corpora and/or large raw dialogues.