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Low-Shot Learning of Automatic Dental Plaque Segmentation Based on Local-to-Global Feature Fusion

机译:基于局部-全局特征融合的低速牙菌斑自动分割学习

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The early detection of dental plaque could prevent periodontal diseases and dental caries, however, it is difficult to recognize it without the use of medical dyeing reagent due to the low contrast between dental plaque and teeth. To combat this problem, this paper introduces a novel low-shot learning method of the intelligent dental plaque segmentation directly using oral endoscope images. The key contribution is to conduct low-shot learning at the super-pixel level and integrate the super-pixels' global and local features towards better segmentation results. Our rationale is that, super-pixel based CNN feature focuses on the statistical distribution of plaques' color, heat kernel signature (HKS) aims to capture the local-to-global structure relationship in the nearby regions centering around plaque area, and circle-LBP feature depicts the local texture pattern on the plaque area. The experimental results confirm that our method outperforms the state-of-the-art methods based on small scale training datasets, and the user study demonstrates our method is more accurate than conventional manual results delineated by experienced dentists.
机译:牙菌斑的早期检测可以预防牙周疾病和龋齿,但是,由于牙菌斑和牙齿之间的对比度较低,因此如果不使用医用染色试剂就很难识别出来。为了解决这个问题,本文介绍了一种直接使用口腔内窥镜图像进行智能牙菌斑分割的低速学习方法。关键贡献在于在超像素级别进行低镜头学习,并将超像素的全局和局部特征整合在一起,以获得更好的分割结果。我们的基本原理是,基于超像素的CNN功能着重于斑块颜色的统计分布,热核签名(HKS)旨在捕获以斑块区域为中心的附近区域的局部到全局结构关系,并圈出- LBP特征描绘了斑块区域上的局部纹理图案。实验结果证实,我们的方法优于基于小规模训练数据集的最新方法,而用户研究表明,我们的方法比有经验的牙医描绘的常规人工结果更准确。

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