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Bronchoscope Localization From Depth Map
Key Investigators
  - Shelly Liu (Concord Academy)
 
  - Jonah Berg (The Rivers School)
 
  - Franklin King (BWH)
 
Project Description
The goal is to localize a bronchoscope through the use of depth maps generated from bronchoscopy images using neural networks.
Objective
  - Objective A. Produce point-cloud/models from depth maps.
 
  - Objective B. Within slicer, register point-cloud/models to CT scan model.
 
Approach and Plan
  - We will use data from a bronchoscopy on a phantom lung.
 
  - We will generate depth maps using a technique by Marco Visentini-Scarzanella[1]
 
  - We will then convert depth maps into point clouds
 
  - Finally, we plan to use slicer to register point clouds to the CT scan.
 
Progress and Next Steps
  - The steps we have already completed is the training and testing of the neural networks used to generate depth maps.
 
  - We have converted a depth map into a point cloud.
 
  - We have fixed the issue regarding the size and location of the point cloud relative to its actual position in the phantom lung.
 
  - We also were able to register the point cloud to the CT scan in Slicer using Model/Surface Registration.
 
  - The next step is to improve training so the predicted depth maps are more accurate.
 
Images
From left to right: True RGB, True rendered RGB, True depth map, Predicted rendered RGB, Predicted depth map from predicted RGB, Predicted depth map from true RGB


Red: Original model
Green: Reconstructed from depth map
Background and References
  - https://drive.google.com/file/d/0B0x0v_kN6YuMa0dscEpLUjNnemM/view