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Hauptverfasser: Shen, Feihong, Liu, JIngjing, Lou, Jianwen, Li, Haizhen, Fang, Bing, Ma, Chenglong, Hao, Jin, Feng, Yang, Zheng, Youyi
Format: Preprint
Veröffentlicht: 2022
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Online-Zugang:https://arxiv.org/abs/2212.14162
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author Shen, Feihong
Liu, JIngjing
Lou, Jianwen
Li, Haizhen
Fang, Bing
Ma, Chenglong
Hao, Jin
Feng, Yang
Zheng, Youyi
author_facet Shen, Feihong
Liu, JIngjing
Lou, Jianwen
Li, Haizhen
Fang, Bing
Ma, Chenglong
Hao, Jin
Feng, Yang
Zheng, Youyi
contents Patients take care of what their teeth will be like after the orthodontics. Orthodontists usually describe the expectation movement based on the original smile images, which is unconvincing. The growth of deep-learning generative models change this situation. It can visualize the outcome of orthodontic treatment and help patients foresee their future teeth and facial appearance. While previous studies mainly focus on 2D or 3D virtual treatment outcome (VTO) at a profile level, the problem of simulating treatment outcome at a frontal facial image is poorly explored. In this paper, we build an efficient and accurate system for simulating virtual teeth alignment effects in a frontal facial image. Our system takes a frontal face image of a patient with visible malpositioned teeth and the patient's 3D scanned teeth model as input, and progressively generates the visual results of the patient's teeth given the specific orthodontics planning steps from the doctor (i.e., the specification of translations and rotations of individual tooth). We design a multi-modal encoder-decoder based generative model to synthesize identity-preserving frontal facial images with aligned teeth. In addition, the original image color information is used to optimize the orthodontic outcomes, making the results more natural. We conduct extensive qualitative and clinical experiments and also a pilot study to validate our method.
format Preprint
id arxiv_https___arxiv_org_abs_2212_14162
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle OrthoGAN:High-Precision Image Generation for Teeth Orthodontic Visualization
Shen, Feihong
Liu, JIngjing
Lou, Jianwen
Li, Haizhen
Fang, Bing
Ma, Chenglong
Hao, Jin
Feng, Yang
Zheng, Youyi
Computer Vision and Pattern Recognition
Patients take care of what their teeth will be like after the orthodontics. Orthodontists usually describe the expectation movement based on the original smile images, which is unconvincing. The growth of deep-learning generative models change this situation. It can visualize the outcome of orthodontic treatment and help patients foresee their future teeth and facial appearance. While previous studies mainly focus on 2D or 3D virtual treatment outcome (VTO) at a profile level, the problem of simulating treatment outcome at a frontal facial image is poorly explored. In this paper, we build an efficient and accurate system for simulating virtual teeth alignment effects in a frontal facial image. Our system takes a frontal face image of a patient with visible malpositioned teeth and the patient's 3D scanned teeth model as input, and progressively generates the visual results of the patient's teeth given the specific orthodontics planning steps from the doctor (i.e., the specification of translations and rotations of individual tooth). We design a multi-modal encoder-decoder based generative model to synthesize identity-preserving frontal facial images with aligned teeth. In addition, the original image color information is used to optimize the orthodontic outcomes, making the results more natural. We conduct extensive qualitative and clinical experiments and also a pilot study to validate our method.
title OrthoGAN:High-Precision Image Generation for Teeth Orthodontic Visualization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2212.14162