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Hauptverfasser: Zheng, Mianjie, Yang, Xinquan, He, Along, Li, Xuguang, Zhong, Feilie, Liu, Xuefen, Tang, Kun, Zhang, Zhicheng, Shen, Linlin
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2512.11507
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author Zheng, Mianjie
Yang, Xinquan
He, Along
Li, Xuguang
Zhong, Feilie
Liu, Xuefen
Tang, Kun
Zhang, Zhicheng
Shen, Linlin
author_facet Zheng, Mianjie
Yang, Xinquan
He, Along
Li, Xuguang
Zhong, Feilie
Liu, Xuefen
Tang, Kun
Zhang, Zhicheng
Shen, Linlin
contents Abutment design is a critical step in dental implant restoration. However, manual design involves tedious measurement and fitting, and research on automating this process with AI is limited, due to the unavailability of large annotated datasets. Although self-supervised learning (SSL) can alleviate data scarcity, its need for pre-training and fine-tuning results in high computational costs and long training times. In this paper, we propose a Self-supervised assisted automatic abutment design framework (SS$A^3$D), which employs a dual-branch architecture with a reconstruction branch and a regression branch. The reconstruction branch learns to restore masked intraoral scan data and transfers the learned structural information to the regression branch. The regression branch then predicts the abutment parameters under supervised learning, which eliminates the separate pre-training and fine-tuning process. We also design a Text-Conditioned Prompt (TCP) module to incorporate clinical information (such as implant location, system, and series) into SS$A^3$D. This guides the network to focus on relevant regions and constrains the parameter predictions. Extensive experiments on a collected dataset show that SS$A^3$D saves half of the training time and achieves higher accuracy than traditional SSL methods. It also achieves state-of-the-art performance compared to other methods, significantly improving the accuracy and efficiency of automated abutment design.
format Preprint
id arxiv_https___arxiv_org_abs_2512_11507
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SSA3D: Text-Conditioned Assisted Self-Supervised Framework for Automatic Dental Abutment Design
Zheng, Mianjie
Yang, Xinquan
He, Along
Li, Xuguang
Zhong, Feilie
Liu, Xuefen
Tang, Kun
Zhang, Zhicheng
Shen, Linlin
Computer Vision and Pattern Recognition
Abutment design is a critical step in dental implant restoration. However, manual design involves tedious measurement and fitting, and research on automating this process with AI is limited, due to the unavailability of large annotated datasets. Although self-supervised learning (SSL) can alleviate data scarcity, its need for pre-training and fine-tuning results in high computational costs and long training times. In this paper, we propose a Self-supervised assisted automatic abutment design framework (SS$A^3$D), which employs a dual-branch architecture with a reconstruction branch and a regression branch. The reconstruction branch learns to restore masked intraoral scan data and transfers the learned structural information to the regression branch. The regression branch then predicts the abutment parameters under supervised learning, which eliminates the separate pre-training and fine-tuning process. We also design a Text-Conditioned Prompt (TCP) module to incorporate clinical information (such as implant location, system, and series) into SS$A^3$D. This guides the network to focus on relevant regions and constrains the parameter predictions. Extensive experiments on a collected dataset show that SS$A^3$D saves half of the training time and achieves higher accuracy than traditional SSL methods. It also achieves state-of-the-art performance compared to other methods, significantly improving the accuracy and efficiency of automated abutment design.
title SSA3D: Text-Conditioned Assisted Self-Supervised Framework for Automatic Dental Abutment Design
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.11507