报告人:Haimiao Zhang(Peking University)
 
                    时间:2018-10-26  12:00-13:30
  
                    地点:Room 1560, Sciences Building No. 1
                   
                  
                    12:00-12:30 lunch;12:30-13:30 Talk
 
Abstract: CT image reconstruction from incomplete data, such as sparse views and limited angle 
reconstruction, is an important and challenging problem in medical imaging. In this talk, I will 
present a deep convolutional neural network (CNN) architecture, called JSR-Net, that jointly 
reconstructs CT images and their associated Radon domain projections. JSR-Net combines the 
traditional model based approach with deep architecture design of deep learning.  A hybrid loss 
function is adopted to improve the JSR-Net performance, which is efficient to  protect important 
structures in the phantom. Numerical experiments demonstrate that JSR-Net outperforms some 
latest model based reconstruction methods, as well as a recently proposed deep model.
 
欢迎各位同学积极参加,报名链接https://www.wjx.top/jq/29438199.aspx, 报名截止时间为10月25日
下午16:00,我们将为报名同学提供午餐。