


李弘扬
Assistant Professor, HKU Musketeers Foundation Institute of Data Science
Hongyang Li is an Assistant Professor at Musketeers Foundation Institute of Data Science, University of Hong Kong and has led OpenDriveLab (opendrivelab.com) since 2021. His research focus is on autonomous driving and embodied AI. He led the end-to-end autonomous driving project, UniAD and won the IEEE CVPR 2023 Best Paper Award. UniAD has a tremendous impact both in academia and industry, including the recent rollout to customers by Tesla in FSD V12. He created the first large-scale real robot ecosystem, AgiBot World, that systematically investigated the scaling law principles for robotic manipulation. He proposed the bird's-eye-view perception work, BEVFormer, that won Top 100 AI Papers in 2022. He served as Area Chair for CVPR, NeurIPS (including 2023 Notable AC), ICLR, ICCV, ICML, RSS, referee for Nature Communications, Guest Editor at Automotive Innovations. He is the Working Group Chair for IEEE Standards P3474 under Vehicular Technology Society. He is the Senior Member of IEEE, CCF and CSIG. He is the recipient of China AI Wu Wen Jun Early Career Award 2024.
李弘扬,香港大学数据科学研究院助理教授,OpenDriveLab团队(opendrivelab.com)联合创始人。研究方向为端到端智能系统在机器人、自动驾驶的应用。他主导的端到端自动驾驶方案UniAD于2022年提出,获IEEE CVPR 2023最佳论文奖。UniAD等系列工作产生了明显的社会经济效益,包括特斯拉于2023年推出的端到端FSD。他构造的超大规模具身智能训练场AgiBot World,是业界首个百万真机、千万仿真数据集,系统研究具身Scaling Law方法论。他提出的俯视图感知方法BEVFormer,获2022年百强影响力人工智能论文榜单,成为业界广泛使用的纯视觉检测基准。他多次担任CVPR、NeurIPS、ICLR、ICCV、ICML、RSS等国际会议领域主席(AC),其中获得NeurIPS 2023 Notable AC。他是《自然·通讯》的审稿人、期刊《Automotive Innovations》客座编委。IEEE、CCF、CSIG高级会员、IEEE汽车委员会自动驾驶国际标准工作组组长。荣获2024年中国吴文俊人工智能青年科技奖、2023年上海市东方英才计划领军项目。


马道林
上海交通大学船建学院长聘教轨副教授


赵昊
清华大学电子工程系学士/博士
赵昊,清华大学电子工程系学士/博士,曾任英特尔中国研究院研究员和北京大学联合博士后。赵昊博士专注于几何与认知层面的场景理解及其在机器人中的应用,于计算机视觉与机器人国际期刊和会议(CVPR,ICCV,ECCV,IJCV,CVIU,ISPRS,T-IP,T-MM,NeurIPS,ICLR,RA-L,ICRA,IROS)上发表近30篇论文。赵昊博士是清华大学最大的机器人社团“天空工场”的创始人和负责人之一,曾参与孵化10余家高新技术创业公司。赵昊博士曾获得LSUN, Holistic3D, LID等多项学术竞赛冠军


高阳
清华大学交叉信息研究院助理教授, 千寻智能联合创始人
高阳,清华大学交叉信息研究院助理教授,主要研究计算机视觉与机器人学。此前,他在美国加州大学伯克利分校获得博士学位,师从Trevor Darrell教授。他还在加州伯克利大学与Pieter Abbeel等人合作完成了博士后工作。在此之前,高阳从清华大学计算机系毕业,与朱军教授在贝叶斯推理方面开展了研究工作。他在2011-2012年在谷歌研究院进行了自然语言处理相关的研究工作、2016年在谷歌自动驾驶部门Waymo的相机感知团队工作,在2018年与Vladlen Koltun博士在英特尔研究院在端到端自动驾驶方面进行了研究工作。高阳在人工智能顶级会议NeurIPS,ICML,CVPR,ECCV,ICLR等发表过多篇学术论文,谷歌学术引用量超过2000次。


赵行
清华大学·交叉信息研究院助理教授, 博士生导师, 星海图联合创始人
赵行,现任清华大学交叉信息研究院助理教授,博士生导师。他的主要研究兴趣包括计算机视觉和听觉,多模态机器学习,自动驾驶等机器人应用。在此之前,赵行在麻省理工学院取得了博士学位,后于谷歌无人车项目Waymo担任研究科学家。赵行博士的多模态机器学习相关的工作曾被多家主流科技媒体报道,如BBC, NBC, 麻省理工科技评论等。他的工作获得了2015年ICCP最佳论文奖。他本人入选了2020年福布斯中国U30科学精英榜。


叶琦
浙江大学控制科学与工程学院百人计划研究员 & 博士生导师
2020年10月底加入浙江大学控制科学与工程学院、工业控制研究所孙优贤院士、陈积明教授的“网络传感与控制”课题组,聘为浙江大学“百人计划”研究员,博士生导师。在加入浙大之前,她于2011年在北京师范大学获得本科学位,2014年在清华大学获得硕士学位,2019年在英国帝国理工学院获得博士学位(导师Tae-kyun Kim)。2019年1月加入英国剑桥微软Mixed Reality & AI Lab,从事3D人体重建和跟踪、VR/AR相关的研究和开发工作,参与了微软新一代增强现实眼镜HoloLens2手势跟踪算法开发,主要合作者Andrew Fitzgibbon,Jamie Shotton,Toby Sharp, Tom Cashman等。
叶琦博士是浙江大学终身教授,曾任微软剑桥混合现实与人工智能实验室研究员。她拥有帝国理工学院博士学位、清华大学硕士学位和北京师范大学学士学位。她的研究方向为计算机视觉、计算机图形学和机器人技术的交叉领域,尤其关注3D视觉和嵌入式人工智能。
目前的研究方向包括交互场景和手-物体三维重建、主动视觉、多视角多模态感知、灵巧机器人操作等。相关研究成果已发表于计算机视觉和机器人领域的顶级会议和期刊,例如TPAMI、ECCV、CVPR、ICCV、RAL、ICRA、IROS等。


安波
President's Chair Professor College of Computing and Data Science Nanyang Technological University, Head, Division of Artificial Intelligence, College of Computing & Data Science, President’s Chair in Computer Science and Engineering, Professor, College of Computing & Data Science, Assistant Chair (Innovation), School of Computer Science and Engineering (SCSE)
Bo An is a Professor in the College of Computing & Data Science, and Co-Director of Artificial Intelligence Research Institute (AI.R) at Nanyang Technological University, Singapore.
He received the Ph.D degree in Computer Science from the University of Massachusetts, Amherst. His current research interests include artificial intelligence, multiagent systems, computational game theory, reinforcement learning, and optimization.
His research results have been successfully applied to many domains including infrastructure security and e-commerce. He has published over 100 referred papers at AAMAS, IJCAI, AAAI, ICAPS, KDD, UAI, EC, WWW, ICLR, NeurIPS, ICML, JAAMAS, AIJ and ACM/IEEE Transactions. Dr. An was the recipient of the 2010 IFAAMAS Victor Lesser Distinguished Dissertation Award, an Operational Excellence Award from the Commander, First Coast Guard District of the United States, the 2012 INFORMS Daniel H. Wagner Prize for Excellence in Operations Research Practice, and 2018 Nanyang Research Award (Young Investigator). His publications won the Best Innovative Application Paper Award at AAMAS’12, the Innovative Application Award at IAAI’16, and the best paper award at DAI’20. He was invited to give Early Career Spotlight talk at IJCAI’17. He led the team HogRider which won the 2017 Microsoft Collaborative AI Challenge. He was named to IEEE Intelligent Systems' "AI's 10 to Watch" list for 2018. He is PC Co-Chair of AAMAS’20 and will be General Co-Chair of AAMAS’23. He is a member of the editorial board of JAIR and is the Associate Editor of AIJ, JAAMAS, IEEE Intelligent Systems, ACM TAAS, and ACM TIST. He was elected to the board of directors of IFAAMAS, senior member of AAAI, and Distinguished member of ACM.


邵林
Assistant Professor in the Department of Computer Science at the NUS
Lin Shao is an Assistant Professor in the Department of Computer Science at the National University of Singapore (NUS), School of Computing. His research interests lie at the intersection of Robotics and Artificial Intelligence. His long-term goal is to build general-purpose robotic systems that intelligently perform a diverse range of tasks in a large variety of environments in the physical world. Specifically, his group is interested in developing algorithms and systems to provide robots with the abilities of perception and manipulation.
He is a co-chair of the Technical Committee on Robot Learning in the IEEE Robotics and Automation Society and serves as the Associated Editor at ICRA 2024. His work received the Best System Paper Award finalist at RSS 2023. Previously, he received his PhD at Stanford University, advised by Jeannette Bohg and co-advised by Leonidas J. Guibas. He received his BS in Geochemistry from Nanjing University.


杨梦月
伦敦大学学院(UCL)博士在读
伦敦大学学院(UCL)博士在读,导师是汪军教授。研究兴趣包括因果表示学习、强化学习和推荐系统,在机器学习领域的顶级会议和期刊上发表多篇一作研究成果。


孙宇
Professor in the Department of Computer Science and Engineering of USF
I am a Professor in the Department of Computer Science and Engineering, and the Director of the Center for Innovation, Technology, and Aging at the University of South Florida (Assistant Professor 2009-2015, Associate Professor 2015-2020, Associate Chair of Graduate Affairs 2018-2020). I was a Visiting Associate Professor at Stanford University from 2016 to 2017. I received his Ph.D. degree in Computer Science from the University of Utah in 2007. Then I had his Postdoctoral training at Mitsubishi Electric Research Laboratories (MERL), Cambridge, MA (2007-2008) and the University of Utah (2008-2009).
I initiated the IEEE RAS Technical Committee on Robotic Hands, Grasping, and Manipulation and served as its first co-Chair. I have also served on several editorial boards as an Associate Editor and Senior Editor, including IEEE Transactions on Robotics, IEEE Robotics and Automation Letters (RA-L), ICRA, and IROS.


李淼
Professor
My research interests are in robotics, machine learning and applied nonlinear control. They encompass robot learning and control, object grasping and manipulation, human-robot interaction, robotic hand and tactile sensing, and neuroscience. I am particularly interested in finding the deep connections between dynamics of intelligent systems and learning algorithms (learning from humans or from optimizations), which enables adaptive, efficient and robust control design for complex systems. The goal of my research is to enable robots to perform skills with the level of dexterity and flexibility that humans demonstrate in similar tasks. I am also particularlly interested in finding the novel application of robotic grasping and manipulation in the real world.
Short Bio: Before joining Wuhan University as an associate professor, I was a PhD student at the Learning Algorithms and Systems Laboratory (LASA) at EPFL in Switzerland, with Professor Aude Billard, working on dynamic grasp adaptation- from humans to robots. Before that, I spent several years of my undergraduate and graduate studies at Huazhong University of Science and Technology, China.