Unsupervised Deep Learning for Fast Imaging: From DAE to Generative
ID:47 View Protection:ATTENDEE Updated Time:2021-11-02 20:09:57 Hits:1629 Invited speech

Start Time:2021-11-14 14:20(Asia/Shanghai)

Duration:25min

Session:PS1 Plenary Session 1 » NM2Workshop on NM Session 2

No files

Abstract
Reconstruction from very few sampling measurements has recently received a huge boost in performance using supervised deep learning methods. However, while they perform extremely well on data satisfying the conditions they were trained on, their performance deteriorates significantly once these conditions are not satisfied. In this talk, we will introduce some unsupervised deep learning schemes combined with classical iterative procedure for highly under-sampling MRI reconstruction, from denoising autoencoder to score-based generative model. Integrating the learned deep prior knowledge into classical model-based reconstruction, comparable performance can be achieved under various sampling patterns and acceleration factors.
 
Keywords
Speaker
Qiegen Liu
Professor Nanchang University

Professor, Nanchang University
*Director of the Laboratory for smart sensing and imaging, Nanchang University
*IEEE Senior member
*Member of CCF

Submit Comment
Verify Code Change Another
All Comments
Important Date
  • Conference Date

    Nov 13

    2021

    to

    Nov 14

    2021

  • Sep 30 2021

    Contribution Submission Deadline

  • Nov 14 2021

    Registration deadline

Sponsored By
Medical Physics Branch of Chinese Society of Biomedical Engineering
IEEE Beijing Section
Life Electronics Society of Chinese Institute of Electronics
Organized By
Anhui Biomedical Engineering Society.
University of Science and Technology of China
Contact Information