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1. 上海交通大学计算机科学与工程系仿脑计算与机器智能研究中心,上海 200240
2. 上海交通大学上海市教委智能交互与认知工程重点实验室,上海 200240
3. 上海交通大学脑科学与技术研究中心,上海 200240
4. 上海交通大学清源研究院,上海 200240
5. 上海交通大学医学院附属瑞金医院脑机接口与神经调控中心,上海 200025
6. 麻省理工学院脑与认知科学系,美国 剑桥 02139
[ "吕宝粮(1960- ),男,IEEE Fellow,上海交通大学计算机科学与工程系教授、博士生导师,上海交通大学计算机科学与工程系仿脑计算与机器智能研究中心主任,上海交通大学上海市教委智能交互与认知工程重点实验室主任,上海交通大学医学院附属瑞金医院脑机接口与神经调控中心共同主任,上海交通大学医学院附属瑞金医院脑病中心米哈游联合实验室主任,上海交通大学清源研究院执行院长。长期致力于仿脑计算理论与模型、神经网络、情感智能和情感脑机接口的基础算法及其在情感障碍疾病的诊疗的应用等方向的研究。亚太神经网络学会理事,IEEE Transactions on Cognitive and Developmental Systems、《模式识别与人工智能》《智能科学与技术学报》编委。曾获得2018 IEEE Transactions on Autonomous Mental Development 最佳论文奖和 2020 年度第十届吴文俊人工智能科学技术奖自然科学奖一等奖。" ]
[ "张亚倩(1992- ),女,博士,上海交通大学计算机科学与工程系助理研究员,主要研究方向为强化学习、人机交互。" ]
[ "郑伟龙(1988- ),男,博士,麻省理工学院脑与认知科学系博士后,主要研究方向为脑机接口、情感计算、计算神经科学。" ]
网络出版日期:2021-03,
纸质出版日期:2021-03-15
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吕宝粮, 张亚倩, 郑伟龙. 情感脑机接口研究综述[J]. 智能科学与技术学报, 2021,3(1):36-48.
Bao-Liang LU, Yaqian ZHANG, Wei-Long ZHENG. A survey of affective brain-computer interface[J]. Chinese journal of intelligent science and technology, 2021, 3(1): 36-48.
吕宝粮, 张亚倩, 郑伟龙. 情感脑机接口研究综述[J]. 智能科学与技术学报, 2021,3(1):36-48. DOI: 10.11959/j.issn.2096-6652.202104.
Bao-Liang LU, Yaqian ZHANG, Wei-Long ZHENG. A survey of affective brain-computer interface[J]. Chinese journal of intelligent science and technology, 2021, 3(1): 36-48. DOI: 10.11959/j.issn.2096-6652.202104.
情感智能研究的一个重要目标是让机器对人的情绪进行实时、准确的判别,并在此基础上进行更加自然、友好的人机交互。情感脑机接口是一种对人的情绪进行识别和(或)调控的脑机接口,是目前实现情感智能的主要途径。阐述了情感脑机接口的基本概念、工作原理、研究现状、代表性应用和发展趋势,探讨了情感脑机接口在通用人工智能发展过程中所能发挥的作用以及情感脑机接口研究面临的挑战。
An important research goal in emotion artificial intelligence is to make machines understand and recognize human emotions in real-time and facilitate human-computer interaction in a more natural and friendly way.Affective brain-computer interface (aBCI) is a type of BCI that can recognize and/or modulate human emotion.Thus
aBCI plays a critical role in promoting emotion artificial intelligence.The basic concepts and recent research development of aBCI were summarized
and the applications of aBCI in a wide range of domains were outlined.The roles that the aBCI can play in the development of artificial general intelligence and the challenges faced by the aBCI research community were discussed.
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