Automatic segmentation of the carotid artery and internal jugular vein from 2D ultrasound images for 3D vascular reconstruction
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Terry M. Peters | Elvis C. S. Chen | Leah A. Groves | Blake VanBerlo | Natan Veinberg | Abdulrahman Alboog | Leah A. Groves | T. Peters | E. Chen | Abdulrahman S. Alboog | B. Vanberlo | Natan Veinberg | Blake VanBerlo | L. Groves | Blake VanBerlo | Abdulrahman Alboog
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