TCEIP: Text Condition Embedded Regression Network for Dental Implant
Position Prediction
- URL: http://arxiv.org/abs/2306.14406v2
- Date: Thu, 29 Jun 2023 12:52:56 GMT
- Title: TCEIP: Text Condition Embedded Regression Network for Dental Implant
Position Prediction
- Authors: Xinquan Yang and Jinheng Xie and Xuguang Li and Xuechen Li and Xin Li
and Linlin Shen and Yongqiang Deng
- Abstract summary: Deep neural network has been proposed to assist the dentist in designing the location of dental implant.
literature works do not work well when there are multiple missing teeth and easily generate false predictions when the teeth are sparsely distributed.
We propose a text condition embedded implant position regression network (TCEIP), to embed the text condition into the encoder-decoder framework.
- Score: 28.824994303170882
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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.
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