Automatic cone-beam computed tomography Segmentation with small samples based on Generative Adversarial Networks and semantic segmentation
ID:8 View Protection:ATTENDEE Updated Time:2021-10-30 07:01:24 Hits:1757 Oral Presentation

Start Time:2021-11-13 16:15(Asia/Shanghai)

Duration:15min

Session:PS1 Plenary Session 1 » OR1Workshop on Oral Radiology

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Abstract
This paper establishes a method to realize semi-automatic or automatic labeling of multi-dimensional data based on small samples and weak labeling. This method could effectively assist dentist in segmentation of different tissues. Based on the U-net combined with the Generative Adversarial Networks method, segmentation can be realized on multi-dimensional data. It also includes three-dimensional mesh reconstruction of the segmented tissue, smooth the boundary, and the result data can be used to aid clinical diagnosis and print. The result of segmentation can reflect the structural distribution of different tissues, and effectively build a mechanical model based on Cone-beam computed tomography systems (CBCT) datasets.
Keywords
segmentation,Generative Adversarial Networks,annotation,CBCT
Speaker
慧芳 杨
工程师 北京大学口腔医院

Submission Author
慧芳 杨 北京大学口腔医院
刚 李 北京大学口腔医院
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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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