From Full and Partial Intraoral Scans to Crown Proposal: A Classification-Guided Restoration Assistance Pipeline
Rabin Kunwar, Dikshya Parajuli, Rujal Acharya, Romik Gosai, Prince Panta, Kundan Siwakoti, Shuvangi Adhikari, Saugat Kafley, Louis Digiorgio, Amit Regmi, Akio Tanaka, Masahiko Inada, Yuriko Komagamine, Kennta Kashiwazaki, Manabu Kanazawa

TL;DR
This paper introduces an end-to-end pipeline for crown proposals from intraoral scans, combining classification, segmentation, and retrieval to improve accuracy and efficiency in dental restoration planning.
Contribution
It presents a novel classification-guided segmentation and retrieval pipeline that effectively handles partial scans for crown proposal generation.
Findings
Achieved high segmentation accuracy with DSC over 0.92 on partial scans.
Produced crown proposals within 3.5 minutes, suitable for clinical use.
Demonstrated robustness across various scan types and anatomical classes.
Abstract
Single-unit crown restoration is among the most common procedures in clinical dentistry, with CAD/CAM workflows now designing crowns directly from intraoral scans. Partial scans are often preferred over full-arch scans for single-unit cases due to fewer stitching errors, yet most segmentation networks trained on full arches fail on partial scans, while end-to-end generative crown methods often produce over-smoothed surfaces that lose occlusal detail. We propose an end-to-end pipeline that takes a raw intraoral scan and target FDI tooth number as input and outputs an initial, patient-specific crown proposal for clinician refinement. The pipeline has three phases: (I) data preparation and pose standardization; (II) segmentation routed by scan type; and (III) crown proposal generation via context-aware retrieval and Blender-based fitting. We address partial-scan segmentation through a…
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