Pose-Aware Instance Segmentation Framework from Cone Beam CT Images for
Tooth Segmentation
- URL: http://arxiv.org/abs/2002.02143v1
- Date: Thu, 6 Feb 2020 07:57:34 GMT
- Title: Pose-Aware Instance Segmentation Framework from Cone Beam CT Images for
Tooth Segmentation
- Authors: Minyoung Chung, Minkyung Lee, Jioh Hong, Sanguk Park, Jusang Lee,
Jingyu Lee, Jeongjin Lee, Yeong-Gil Shin
- Abstract summary: Individual tooth segmentation from cone beam computed tomography (CBCT) images is essential for an anatomical understanding of orthodontic structures.
The presence of severe metal artifacts in CBCT images hinders the accurate segmentation of each individual tooth.
We propose a neural network for pixel-wise labeling to exploit an instance segmentation framework that is robust to metal artifacts.
- Score: 9.880428545498662
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Individual tooth segmentation from cone beam computed tomography (CBCT)
images is an essential prerequisite for an anatomical understanding of
orthodontic structures in several applications, such as tooth reformation
planning and implant guide simulations. However, the presence of severe metal
artifacts in CBCT images hinders the accurate segmentation of each individual
tooth. In this study, we propose a neural network for pixel-wise labeling to
exploit an instance segmentation framework that is robust to metal artifacts.
Our method comprises of three steps: 1) image cropping and realignment by pose
regressions, 2) metal-robust individual tooth detection, and 3) segmentation.
We first extract the alignment information of the patient by pose regression
neural networks to attain a volume-of-interest (VOI) region and realign the
input image, which reduces the inter-overlapping area between tooth bounding
boxes. Then, individual tooth regions are localized within a VOI realigned
image using a convolutional detector. We improved the accuracy of the detector
by employing non-maximum suppression and multiclass classification metrics in
the region proposal network. Finally, we apply a convolutional neural network
(CNN) to perform individual tooth segmentation by converting the pixel-wise
labeling task to a distance regression task. Metal-intensive image augmentation
is also employed for a robust segmentation of metal artifacts. The result shows
that our proposed method outperforms other state-of-the-art methods, especially
for teeth with metal artifacts. The primary significance of the proposed method
is two-fold: 1) an introduction of pose-aware VOI realignment followed by a
robust tooth detection and 2) a metal-robust CNN framework for accurate tooth
segmentation.
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