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A PCA-Based method for determining craniofacial relationship and sexual dimorphism of facial shapes

机译:基于PCA的基于PCA的颅面关系和面部形状的性二晶的方法

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Abstract Previous studies have used principal component analysis (PCA) to investigate the craniofacial relationship, as well as sex determination using facial factors. However, few studies have investigated the extent to which the choice of principal components (PCs) affects the analysis of craniofacial relationship and sexual dimorphism. In this paper, we propose a PCA-based method for visual and quantitative analysis, using 140 samples of 3D heads (70 male and 70 female), produced from computed tomography (CT) images. There are two parts to the method. First, skull and facial landmarks are manually marked to guide the model's registration so that dense corresponding vertices occupy the same relative position in every sample. Statistical shape spaces of the skull and face in dense corresponding vertices are constructed using PCA. Variations in these vertices, captured in every principal component (PC), are visualized to observe shape variability. The correlations of skull- and face-based PC scores are analysed, and linear regression is used to fit the craniofacial relationship. We compute the PC coefficients of a face based on this craniofacial relationship and the PC scores of a skull, and apply the coefficients to estimate a 3D face for the skull. To evaluate the accuracy of the computed craniofacial relationship, the mean and standard deviation of every vertex between the two models are computed, where these models are reconstructed using real PC scores and coefficients. Second, each PC in facial space is analysed for sex determination, for which support vector machines (SVMs) are used. We examined the correlation between PCs and sex, and explored the extent to which the choice of PCs affects the expression of sexual dimorphism. Our results suggest that skull- and face-based PCs can be used to describe the craniofacial relationship and that the accuracy of the method can be improved by using an increased number of face-based PCs. The results show that the accuracy of the sex classification is related to the choice of PCs. The highest sex classification rate is 91.43% using our method. Highlights ? Statistical shape spaces of skulls and faces are constructed using PCA. ? Skull and face shape viabilities captured in every PC are visualized. ? Least squares linear regression is used to fit craniofacial relationship between skull and face. ? Significant difference and SVMs are used to examine sexual dimorphism related to PCs. ? The choice of PCs affects the computation of craniofacial relationship and sex classification.
机译:摘要以前的研究使用了主要成分分析(PCA)来研究颅面关系,以及使用面部因素的性别测定。然而,很少有研究已经调查了主要成分(PCS)的选择影响了颅面关系和性二晶的分析。在本文中,我们提出了一种基于PCA的视觉和定量分析方法,使用从计算机断层扫描(CT)图像产生的3D头(70次雄性和70个雌性)的140个样本。该方法有两部分。首先,手动标记头骨和面部地标以指导模型的注册,以便密集的对应顶点占据每个样本中相同的相对位置。使用PCA构建颅骨和面部骨头的统计形状空间。在每个主组件(PC)中捕获的这些顶点的变化被可视化以观察形状可变性。分析了基于颅骨和基于面部的PC分数的相关性,并且使用线性回归来适应颅面关系。我们基于这种颅面关系和颅骨的PC分数来计算面部的PC系数,并应用系数以估计颅骨的3D面。为了评估计算的颅面关系的准确性,计算了两种模型之间每个顶点的平均值和标准偏差,其中使用真正的PC分数和系数重建这些模型。其次,分析面部空间中的每个PC进行性别测定,使用支持载体机(SVM)。我们检查了PC和性别之间的相关性,并探讨了PCS选择的程度影响了性别二态性的表达。我们的研究结果表明,基于颅骨和面部的PC可用于描述颅面关系,并且通过使用增加的基于面部的PC来改善方法的准确性。结果表明,性分类的准确性与PC的选择有关。使用我们的方法,性别分类率最高为91.43%。强调 ?使用PCA构建颅骨和面的统计形状空间。还在每个PC中捕获的头骨和面部形状的可视化。还最小二乘线性回归用于装配头骨和面部之间的颅面关系。还使用显着的差异和SVM来检查与PC相关的性二相。还PC的选择会影响颅面关系和性分类的计算。

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