Artificial intelligence (AI) technology is increasingly used for digital orthodontics, but one of the challenges is to automatically and accurately detect tooth landmarks and axes. This is partly because of sophisticated geometric definitions of them, and partly due to large variations among individual tooth and across different types of tooth. As such, we propose a deep learning approach with a labeled dataset by professional dentists to the tooth landmark/axis detection on tooth model that are crucial for orthodontic treatments. Our method can extract not only tooth landmarks in the form of point (e.g. cusps), but also axes that measure the tooth angulation and inclination. The proposed network takes as input a 3D tooth model and predicts various types of the tooth landmarks and axes. Specifically, we encode the landmarks and axes as dense fields defined on the surface of the tooth model. This design choice and a set of added components make the proposed network more suitable for extracting sparse landmarks from a given 3D tooth model. Extensive evaluation of the proposed method was conducted on a set of dental models prepared by experienced dentists. Results show that our method can produce tooth landmarks with high accuracy. Our method was examined and justified via comparison with the state-of-the-art methods as well as the ablation studies.
翻译:人工智能(AI)技术越来越多地用于数字牙医学,但其中一项挑战是自动和准确地探测牙齿标志和斧头,部分是由于对牙的精确几何定义复杂,部分是由于牙牙和不同类型牙的差别很大。因此,我们建议采用深层次学习方法,由专业牙医为牙齿标志/轴探测牙齿模型提供标签数据集,以用于对牙医学治疗至关重要的牙齿标志/轴检测。我们的方法不仅可以自动和准确地探测牙齿标志和斧头,而且还可以测量牙齿调节和倾向的轴头。拟议网络将3D牙模型作为输入,并预测各种牙齿标志和轴的种类。具体地说,我们将这些标志和轴作为牙齿模型表面确定的密度田地进行编码。这一设计选择和一组新增部件使拟议网络更适合从一个3D牙模型中提取稀少的标志。对拟议方法进行了广泛的评价,这是由有经验的牙医编写的一套牙科模型,并用高精确度的方法进行了测试。结果显示,通过高精确度研究,我们用高精确度的方法可以产生。