Cheng Cheng, Cheng Xiaosheng, Dai Ning, Tang Tao, Xu Zhenteng, Cai Jia
College of Aeronautical Engineering, Nanjing Institute of Industry Technology, 1 Yangshan North Road, Qixia Dist, Nanjing, 210046, PR China.
Mailbox 357, College of Mechanical and Electrical Engineering, Nanjing University of Aeronautics and Astronautics, 29 Yudao Street, Qinhuai Dist, Nanjing, 210016, PR China.
J Oral Biol Craniofac Res. 2019 Jul-Sep;9(3):241-250. doi: 10.1016/j.jobcr.2019.06.002. Epub 2019 Jun 4.
In developing treatment plan before complete denture restoration, doctors need to help the patient regain chewing ability while considering facial shape reconstruction after the surgery. At present, facial deformation prediction depends on the subjective judgment and experience of doctors; thus, an accurate basis for scientific quantitative analysis is lacking. With the development of computer technology, this paper proposed new facial morphology prediction method based on principal component analysis. Firstly, the curvature feature template with few feature points is constructed to replace the deformed areas of facial models. Secondly, the principal component analysis method is used to construct an elastic deformation prediction model for complex skin tissue. Finally, the Laplacian deformation technology is used to reconstruct the facial model and to obtain an intuitive digital 3D model. This method can adjust the facial deformation amplitude interactively by controlling shape parameters and predict the effect in consideration of different doctors' varied needs and habits. The experiments show that this method can predict the facial models interactively and the average deviation between the prediction models and the post-treatment facial models is between -2.102 and 2.102 mm by adjusting the shape parameters.
在制定全口义齿修复前的治疗方案时,医生需要帮助患者恢复咀嚼能力,同时考虑术后面部形态的重建。目前,面部变形预测依赖于医生的主观判断和经验,因此缺乏科学定量分析的准确依据。随着计算机技术的发展,本文提出了一种基于主成分分析的新的面部形态预测方法。首先,构建具有少量特征点的曲率特征模板来替代面部模型的变形区域。其次,使用主成分分析方法构建复杂皮肤组织的弹性变形预测模型。最后,利用拉普拉斯变形技术对面部模型进行重建,得到直观的数字3D模型。该方法可以通过控制形状参数交互式地调整面部变形幅度,并考虑不同医生的不同需求和习惯来预测效果。实验表明,该方法可以交互式地预测面部模型,通过调整形状参数,预测模型与治疗后面部模型之间的平均偏差在-2.102至2.102毫米之间。