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Automatic Landmark Identification in Cranio-Facial CBCT
Key Investigators
  - Luc Anchling (UoM)
 
  - Nathan Hutin (UoM)
 
  - Maxime Gillot (UoM)
 
  - Baptiste Baquero (UoM)
 
  - Jonas Bianchi (UoM, UoP)
 
  - Marcela Gurgel (UoM)
 
  - Najla Al Turkestani (UoM)
 
  - Marilia Yatabe (UoM)
 
  - Lucia Cevidanes (UoM)
 
  - Juan Prieto (UoNC)
 
Project Description
We propose a novel approach that reformulates anatomical landmark detection as a classification problem through a virtual agent placed inside a 3D Cone-Beam Computed Tomography (CBCT) scan. This agent is trained to navigate in a multi-scale volumetric space to reach the estimated landmark position. The agent movements decision relies on a combination of Densely Connected Convolutional Networks (DCCN) and fully connected layers.
Objective
  - Retrain the different models with new data
 
  - Do some maintenance on the previously made code
 
Approach and Plan
  - Use the available code to train with additional patient data for each landmarks
 
Progress and Next Steps
  - ALI models are currently being retrained with new data
 
Illustrations

Background and References