Text-Conditioned Multi-Expert Regression Framework for Fully Automated Multi-Abutment Design
arXiv cs.CV / 4/13/2026
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Key Points
- The paper proposes TEMAD, a fully automated, text-conditioned multi-expert framework aimed at scaling dental implant abutment design beyond manual or semi-automated workflows.
- TEMAD combines implant site localization (via an Implant Site Identification Network) with a multi-abutment regression pipeline that predicts compatible abutment parameters.
- It introduces a Tooth-Conditioned Feature-wise Linear Modulation (TC-FiLM) module that uses tooth embeddings to adapt mesh feature representations in a position-specific manner.
- A System-Prompted Mixture-of-Experts (SPMoE) mechanism selects and guides expert components using implant system prompts, improving system-aware regression for different implant platforms.
- Experiments on a large abutment design dataset report state-of-the-art performance, especially for multi-abutment scenarios, supporting TEMAD’s effectiveness for automated dental implant planning.
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