[1]张新钰,邹镇洪,李志伟,等.面向自动驾驶目标检测的深度多模态融合技术[J].智能系统学报,2020,15(4):758-771.[doi:10.11992/tis.202002010]
 ZHANG Xinyu,ZOU Zhenhong,LI Zhiwei,et al.Deep multi-modal fusion in object detection for autonomous driving[J].CAAI Transactions on Intelligent Systems,2020,15(4):758-771.[doi:10.11992/tis.202002010]
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面向自动驾驶目标检测的深度多模态融合技术

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备注/Memo

收稿日期:2020-02-14。
基金项目:国家重点研发计划项目(2018YFE0204300);北京市科技计划项目(Z191100007419008);国强研究院项目(2019GQG1010)
作者简介:张新钰,研究员,清华猛狮智能车团队负责人,剑桥大学访问学者,主要研究方向为智能驾驶和多模态信息融合。担任国家重点研发计划项目负责人。多次在国内无人驾驶顶级赛事获得冠亚军,获2019年吴文俊人工智能科技进步二等奖,发表智能驾驶领域的SCI/EI检索30篇,入选ESI高被引论文1篇;刘华平,副教授,博士生导师,中国人工智能学会理事,中国人工智能学会认知系统与信息处理专业委员会秘书长,IEEE高级会员,主要研究方向为智能机器人的多模态感知、学习与控制技术。李骏,中国工程院院士,中国汽车工程学会理事长,主要研究方向为智能网联汽车和汽车动力总成,长期主持我国大型汽车企业的产品研发与科技创新工作,在汽车动力总成、新能源汽车和智能网联汽车领域有多项科研成果,曾获国家科技进步一等奖1项、二等奖1项,国家技术发明奖二等奖1项,中国汽车工业科技进步特等奖3项、一等奖2项,国家机械工业科技进步一等奖2项、二等奖1项,2012年荣获何梁何利科学与技术创新奖,获得授权专利9项,发表学术论文98篇,出版专著1部。
通讯作者:刘华平.E-mail:hpliu@tsinghua.edu.cn

更新日期/Last Update: 2020-07-25
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