基于U-NETS的牙科全景x线片精确分割

T. L. Koch, Mathias Perslev, C. Igel, Sami Sebastian Brandt
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引用次数: 59

摘要

全卷积神经网络已被证明是医学图像分割的有力工具。我们将基于U-Net架构的FCN应用于具有挑战性的牙科全景x线片语义分割任务,并讨论了提高分割性能的一般技巧。其中包括网络集成、测试时间增强、数据对称性开发和低质量注释的自引导。我们的方法的性能在1500张牙科全景x光片的高度可变数据集上进行了测试。在使用1201张图像进行训练的情况下,单个网络的Dice得分达到0.934,形成一个集合将得分提高到0.936。
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Accurate Segmentation of Dental Panoramic Radiographs with U-NETS
Fully convolutional neural networks (FCNs) have proven to be powerful tools for medical image segmentation. We apply an FCN based on the U-Net architecture for the challenging task of semantic segmentation of dental panoramic radiographs and discuss general tricks for improving segmentation performance. Among those are network ensembling, test-time augmentation, data symmetry exploitation and bootstrapping of low quality annotations. The performance of our approach was tested on a highly variable dataset of 1500 dental panoramic radiographs. A single network reached the Dice score of 0.934 where 1201 images were used for training, forming an ensemble increased the score to 0.936.
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