基于半监督学习的牙齿分割

Yonghui Gao, Xiaoxiao Li
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引用次数: 2

摘要

有效的牙体分割为正畸手术和治疗提供了重要的帮助。然而,由于特殊的牙齿解剖结构和拓扑结构的变化,这项任务存在一些重大挑战。本文提出了一种鲁棒交互式牙齿分割方法,该方法将该问题视为半监督学习任务。对三维平均位移进行初始分类,将体数据划分为同质块,指导后续学习。它很容易实现,因为只需要一些简单的操作。它是准确的,因为通过半监督学习可以学习到更一般的线性或非线性模型。实验结果证明了该方法在复杂背景下提取牙齿轮廓的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Teeth segmentation via semi-supervised learning
Efficient dental segmentation from volume data provides important assistance for orthodontic surgery and treatment. However, this task exits several major challenges due to the special dental anatomy and topological changes. This paper presents a robust interactive dental segmentation method, which treats this problem as a semi-supervised learning task. An initial classification of 3D mean shift is performed to partition the volume data into homogeneous blocks to guide the subsequent learning. It is easy to implement because only some simple operations are needed. It is accurate because a more general linear or nonlinear model can be learned by virtue of semi-supervised learning. Experimental results demonstrate the performance of the proposed scheme in extracting dental contours from complex background.
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