Automated CNN-Based Tooth Segmentation in Cone-Beam CT for Dental Implant Planning
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Jin Keun Seo | Seong-Whan Lee | Jong-Seok Lee | Chankil Lee | S. Woo | J. Yu | S. Lee | C. Lee | J. Seo | J. Lee | S. Woo | S. Woo | J. Yu | Jaejun Seo | Jaehyoung Yu | Chulhee Lee
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