TCEIP: Text Condition Embedded Regression Network for Dental Implant Position Prediction

Xinquan Yang, Jinheng Xie, Xuguang Li, Xuechen Li, X. Li, Linlin Shen, Yongqiang Deng
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引用次数: 1

Abstract

When deep neural network has been proposed to assist the dentist in designing the location of dental implant, most of them are targeting simple cases where only one missing tooth is available. As a result, literature works do not work well when there are multiple missing teeth and easily generate false predictions when the teeth are sparsely distributed. In this paper, we are trying to integrate a weak supervision text, the target region, to the implant position regression network, to address above issues. We propose a text condition embedded implant position regression network (TCEIP), to embed the text condition into the encoder-decoder framework for improvement of the regression performance. A cross-modal interaction that consists of cross-modal attention (CMA) and knowledge alignment module (KAM) is proposed to facilitate the interaction between features of images and texts. The CMA module performs a cross-attention between the image feature and the text condition, and the KAM mitigates the knowledge gap between the image feature and the image encoder of the CLIP. Extensive experiments on a dental implant dataset through five-fold cross-validation demonstrated that the proposed TCEIP achieves superior performance than existing methods.
牙种植体位置预测的文本条件嵌入回归网络
当深度神经网络被提出来帮助牙医设计种植体的位置时,大多数都是针对只有一颗缺牙的简单病例。因此,当有多个缺失牙齿时,文学作品不能很好地工作,当牙齿稀疏分布时,文学作品容易产生错误的预测。在本文中,我们试图将弱监督文本,目标区域,整合到植入位置回归网络中,以解决上述问题。我们提出了一种文本条件嵌入植入位置回归网络(TCEIP),将文本条件嵌入到编码器-解码器框架中,以提高回归性能。为了促进图像和文本特征之间的交互,提出了一种由跨模态注意(CMA)和知识对齐模块(KAM)组成的跨模态交互方法。CMA模块在图像特征和文本条件之间进行交叉关注,KAM模块减轻了图像特征和CLIP图像编码器之间的知识差距。在牙科种植体数据集上进行的大量实验通过五倍交叉验证表明,所提出的TCEIP比现有方法具有更好的性能。
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