58 / 2021-10-15 09:50:50
A Preliminary Study on Unsupervised Low-DoseCT Denoising Based on Bayesian Neural Network
Keywords—low-dose CT, denoising, unsupervised deep learning, Bayesian Neural Network.
Final Paper
jie guo / Information Engineering University;
Ailong Cai / IEU
Xiaohuan Yu / Information Engineering University
Yizhong Wang / Information Engineering University
libin hou / Information Engineering University;
Bin Yan / Information Engineering University
Low-dose computed tomography(CT) has attraced more attention due to its prevalence and advantages in reducing the potential radiation risk, while suffering from increased noise. In this paper, we propose an unsupervised low-dose CT denoising method based on Bayesian Neural Network(BNN) to enhance low-dose CT image quality. Different from supervised deep learning, this work only needs a single image, and not requiring massive label data sets for training. On the other hand, all weights in BNN are random variables represented by certain probability distributions, instead of a fixed value in the ordinary neural network. The results on simulated CT data show that the method captures the statistical characteristics of image structure better than the other methods in the sense of structural similarity.



 
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
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