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Center-Sensitive and Boundary-Aware Tooth Instance Segmentation and Classification from Cone-Beam CT

机译:锥束CT的中心敏感和边界感知牙齿实例分割和分类

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Tooth instance segmentation provides important assistance for computer-aided orthodontic treatment. Many previous studies on this issue have limited performance on distinguishing adjacent teeth and obtaining accurate tooth boundaries. To address the challenging task, in this paper, we present a novel method achieving tooth instance segmentation and classification from cone beam CT (CBCT) images. The core of our method is a two-level hierarchical deep neural network. We first embed center-sensitive mechanism with global stage heatmap, so as to ensure accurate tooth centers and guide the localization of tooth instances. Then in the local stage, DenseASPP-UNet is proposed for fine segmentation and classification of individual tooth. Further, in order to improve the accuracy of tooth segmentation boundary and refine the boundaries of overlapped teeth, a boundary-aware dice loss and a novel label optimization are also applied in our method. Comparative experiments show that the proposed framework exhibits high segmentation performance and outperforms the state-of-the-art methods.
机译:牙齿实例分割为计算机辅助正畸治疗提供了重要的帮助。关于此问题的许多先前研究在区分相邻牙齿和获得准确的牙齿边界方面的性能有限。为了解决具有挑战性的任务,在本文中,我们提出了一种从锥束CT(CBCT)图像实现牙齿实例分割和分类的新方法。我们方法的核心是两级分层深度神经网络。我们首先在全局阶段热图中嵌入中心敏感机制,以确保精确的牙齿中心并指导牙齿实例的定位。然后在局部阶段,提出了DenseASPP-UNet来对单个牙齿进行精细分割和分类。此外,为了提高切齿边界的准确性和细化重叠牙齿的边界,在我们的方法中还应用了边界感知的骰子损失和新颖的标签优化方法。比较实验表明,提出的框架具有较高的分割效果,并且优于最新方法。

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