澳门金沙娱乐城官网-金沙官网

今天是
今日新發(fā)布通知公告1條 | 上傳規(guī)范

【機(jī)械與車(chē)輛學(xué)院】“新能源車(chē)輛及運(yùn)用”學(xué)科創(chuàng)新引智基地學(xué)術(shù)報(bào)告

來(lái)源:   發(fā)布日期:2018-05-28

題目:Research on Vehicle Automation and Artificial Intelligence at Berkeley DeepDrive, UC Berkeley – Challenges and Opportunities
報(bào)告人: Ching-Yao Chan (Research Professor, Associate Director, Berkeley DeepDrive, University of California at Berkeley, USA)
報(bào)告時(shí)間:2018 年 5 月 30 日,上午 10:00-11:30
報(bào)告地點(diǎn):車(chē)輛重點(diǎn)實(shí)驗(yàn)樓 2 層報(bào)告廳
報(bào)告語(yǔ)言:英文/中文

報(bào)告內(nèi)容:

In this talk, the following topics will be covered:
?A brief introduction of connected and automated vehicles activities at California PATH (Partners of Advanced Transportation Technology) at UC Berkeley
?An overview of the Berkeley DeepDrive research center at UC Berkeley and its research activities
?Machine learning in automated driving systems
?Safety challenges of automated driving systems
?Opportunities for future research

The talk begins with a highlight of historical research activity as well as a review of recent and ongoing studies at California PATH, a world-renowned institution on intelligent transportation systems. The speaker will then provide an overview of the Berkeley DeepDrive consortium, which currently has more than 20 industrial partners and is focused on the application of deep learning technologies for automotive applications. The talk will then lead to the descriptions of several current research projects that address different aspects of automated driving. The speaker will then use some recent incidents of automated driving systems to illustrate the safety issues and challenges of automated driving in real-world driving. An interactive discussion with the audience will be held. As a conclusion of the talk, we will cover the future industrial trends and research topics that will help synergize the potential of artificial intelligence and autonomous driving.

報(bào)告人背景資料:

Ching-Yao Chan is a Research Professor at University of California, Berkeley. He serves as the Program Leader for Safety Research at California PATH (Partners for Advanced Transportation Technology) of Institute of Transportation Studies (ITS). He is also serving as Associate Director of Berkeley Deep Drive (BDD). BDD, which currently has more than 20 industrial partners, is a research center focusing on the application of deep learning technologies for intelligent dynamic systems, including autonomous driving. He obtained his doctoral degree from Berkeley in 1988 and worked in the private sectors before joining PATH in 1994. Since then, he has been involved in a variety of research projects.
He has 30 years of research experience spans from vehicle automation, driver-assistance systems, sensing and wireless communication technologies, to driver behaviors, vehicular safety, highway network safety assessment, machine learning technologies and their applications on automated driving systems. He has published more than 130 papers in various journals and conferences. With his nationally recognized expertise, he was invited by Society of Automotive Engineers (SAE) to provide tutorials in an SAE seminar series to more than 500 automotive professionals over a number of years. He also lectured extensively for various famous organizations. He was the recipient of the SAE Forest R. MacFarland Award for his outstanding contributions to engineering education. His project has also won the prestigious award of the Best of ITS Research Award from the ITS America Annual Meeting.


主辦單位:“新能源車(chē)輛及運(yùn)用”引智基地
                      特種車(chē)輛研究所
車(chē)輛傳動(dòng)國(guó)家重點(diǎn)實(shí)驗(yàn)室

 


大发888娱乐城技巧| 新濠百家乐的玩法技巧和规则| 百家乐官网走势图解| 百家乐乐翻天| 百家乐官网怎样发牌| 百家乐学院教学视频| 大发888如何注册送58| 新澳博百家乐官网娱乐城| 网络百家乐官网的陷阱| 百家乐的必胜方法| 万山特区| rmb百家乐的玩法技巧和规则| 百家乐官网和局投注法| 威尼斯人娱乐城网络博彩| 百家乐官网技术下载| 百家乐定位胆技巧| 百家乐官网获胜秘决百家乐官网获胜秘诀| 博彩百家乐最新优惠| 百家乐网络公式| 最新百家乐官网游戏机| 富田太阳城租房| 百家乐游戏分析| 百家乐官网游戏怎样玩| 大发888娱乐场骗局| 皇冠百家乐客户端皇冠| 百家乐官网翻天粤语下载| 威尼斯人娱乐最新地址| 百家乐怎么会赢| 百家乐官网游戏作弊| 平博娱乐| 二八杠语音报牌器| 百家乐平台在线| 聚宝盆百家乐官网的玩法技巧和规则 | 德州扑克 教学| 太阳城百家乐赌博害人| 青鹏百家乐官网游戏币 | 百家乐官网经典路单| 大发888体育在线| 百家乐庄闲的概率| 百家乐官网深圳广告| 百家乐官网如何投注技巧|