邮箱登录 | 所务办公 | 收藏本站 | English | 中国科学院
 
首页 计算所概况 新闻动态 科研成果 研究队伍 国际交流 技术转移 研究生教育 学术出版物 党群园地 科学传播 信息公开
国际交流
学术活动
交流动态
现在位置:首页 > 国际交流 > 学术活动
Learning 3D Digital Humans from Images, Videos and Scans
2019-07-09 | 【 【打印】【关闭】

  报告人:Gerard Pons-Moll,优博网上平台:Max Planck for Informatics (MPII) in Saarbrücken, Germany

  时间:7月11日上午 10:30 ~ 12:00

  地点:446会议室

  报告摘要:

  The research community has made significant progress in modelling people's faces, hands and bodies from data. The standard approach is to capture data coming from 3D/4D scanners and learn models from it. Such approach provides a very useful first step, but it does not scale to the real world. If we want to learn rich models that include clothing, interactions of people, and interactions with the environment geometry, we require new approaches that learn from ubiquitous data such as plain RGB-images and video. In this talk, I will describe some of our works on capturing and learning models of human pose, shape, and clothing from 3D scans as well as from plain video.

  Topics: Computer Vision, Computer Graphics, Machine Learning, Human Digitization

  报告人简介:

  Gerard Pons-Moll is the head of the Emmy Noether research group "Real Virtual Humans" at the Max Planck for Informatics (MPII) in Saarbrücken, Germany . His research lies at the intersection of computer vision, computer graphics and machine learning -- with special focus on analyzing people in videos, and creating virtual human models by "looking" at real ones. His research has produced some of the most advanced statistical human body models of pose, shape, soft-tissue and clothing (which are currently used for a number of applications in industry and research), as well as algorithms to track and reconstruct 3D people models from images, video, depth, and IMUs. His work has received several awards including an Emmy Noether Starting Grant (2018), a Google Faculty Research Award (2019), Best Papers at BMVC’13, Eurographics’17, 3DV’18 and his work has been published at the top venues and journals including CVPR, ICCV, Siggraph, Eurographics, IJCV and PAMI. Group website: http://www.fif.1414033.com

 
网站地图 | 联系我们 | 意见反馈 | 申博sunbet开户
 
京ICP备05002829号 京公网安备1101080060号
tyc829.com 新博娱乐代理电话最高占成 钱柜娱乐网上直营 乐百家网上官网 豪利777代理合作
竞博注册最好 金三角娱乐官网充值返点 尊龙娱乐游戏网 心水博官网网址最高占成 一号庄娱乐怎么开户
88赌城娱乐代理加盟最高占成 澳门网上赌场1倍打码 中国足彩网必赢彩票 齐发娱乐vip 登峰娱乐注册送彩金最高占成
优发娱乐太陽城最高返水 玛雅代理官网 菲律宾申博开户合作登入 178国际娱乐开户流程 海天娱乐下载