• Title/Summary/Keyword: emotion behavior synchronization

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The Emotional Boundary Decision in a Linear Affect-Expression Space for Effective Robot Behavior Generation (효과적인 로봇 행동 생성을 위한 선형의 정서-표정 공간 내 감정 경계의 결정 -비선형의 제스처 동기화를 위한 정서, 표정 공간의 영역 결정)

  • Jo, Su-Hun;Lee, Hui-Sung;Park, Jeong-Woo;Kim, Min-Gyu;Chung, Myung-Jin
    • 한국HCI학회:학술대회논문집
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    • 2008.02a
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    • pp.540-546
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    • 2008
  • In the near future, robots should be able to understand human's emotional states and exhibit appropriate behaviors accordingly. In Human-Human Interaction, the 93% consist of the speaker's nonverbal communicative behavior. Bodily movements provide information of the quantity of emotion. Latest personal robots can interact with human using multi-modality such as facial expression, gesture, LED, sound, sensors and so on. However, a posture needs a position and an orientation only and in facial expression or gesture, movements are involved. Verbal, vocal, musical, color expressions need time information. Because synchronization among multi-modalities is a key problem, emotion expression needs a systematic approach. On the other hand, at low intensity of surprise, the face could be expressed but the gesture could not be expressed because a gesture is not linear. It is need to decide the emotional boundaries for effective robot behavior generation and synchronization with another expressible method. If it is so, how can we define emotional boundaries? And how can multi-modality be synchronized each other?

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The System Developing Social Network Group by Using Life Logging Data (라이프로깅 데이터를 이용한 소셜 네트워크 그룹 생성 시스템)

  • Jo, Youngho;Woo, Jincheol;Lee, Hyunwoo;Cho, Ayoung;Whang, Mincheol
    • Journal of the HCI Society of Korea
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    • v.12 no.2
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    • pp.13-19
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    • 2017
  • Various life-logging based on cloud service have developed social network according to the advanced technology of smartphone and wearable device. Daily digital life on social networks has been shared information and emotion and developed new social relationships. Recent life-logging has required social relationships beyond extension of personal memory and anonymity for privacy protection. This study is to determine social network group by using life-logging data obtained in daily lives and to categorize emotion behavior with anonymity guarantee. Social network group was defined by grouping similar representative emotional behavior. The public's patterns and trends was able to be inferred by analyzing representative emotion and behavior of the social groups network.