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The Use of Pseudo-landmarks for Craniofacial Analysis: A Comparative Study with L1-Regularized Logistic Regression

机译:伪地标在颅面分析中的应用:与L1正则Logistic回归的比较研究

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摘要

Morphometrics, the quantitative analysis of shape, is used by craniofacial researchers to study abnormalities in human face shapes. Most of the work in craniofacial morphometrics uses landmark points that are manually marked on 3D face data and processed via a generalized Procrustes analysis. For large data sets this manual process is very time-consuming. Dense sets of pseudo-landmarks have also been proposed and successfully used for classification and clustering, but the two main methods in the literature are very computationally intensive. We have developed a computationally simple method that can compute pseudo-landmark points at different resolutions from 3D meshes of human faces. In this paper, we perform a comparative study employing L1-regularized logistic regression to train a classifier that predicts the sex of 500 normal adult face meshes in order to compare our method to two alternative pseudo-landmark methods and a distance matrix approach. Our results show that our method, which is fully automatic, achieved similar results to the best-scoring methods with no manual landmarking and with much lower computation time. Use of the distance matrix did not improve classification results.
机译:颅面研究人员使用形态计量学对形状进行定量分析,以研究人脸形状的异常情况。颅面形态计量学的大部分工作都使用界标点,这些界标点在3D人脸数据上手动标记,并通过广义Procrustes分析进行处理。对于大数据集,此手动过程非常耗时。还提出了密集的伪地标集并将其成功地用于分类和聚类,但是文献中的两种主要方法在计算上非常密集。我们开发了一种计算简单的方法,可以从人脸的3D网格中以不同的分辨率计算伪地标点。在本文中,我们进行了一项比较研究,该研究使用L1正则化Logistic回归来训练可预测500个正常成人面部网格性别的分类器,以便将我们的方法与两种替代的伪地标方法和距离矩阵方法进行比较。我们的结果表明,我们的方法是全自动的,与最佳评分方法取得了相似的结果,没有人工标记,并且计算时间短得多。使用距离矩阵并不能改善分类结果。

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