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An Automated CNN-based 3D Anatomical Landmark Detection Method to Facilitate Surface-Based 3D Facial Shape Analysis

机译:一种基于基于CNN的3D解剖标记检测方法,便于基于表面的3D面部形状分析

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Maternal alcohol consumption during pregnancy can lead to a wide range of physical and neurodevelopmental problems, collectively known as fetal alcohol spectrum disorders (FASD). In many cases, diagnosis is heavily reliant on the recognition of a set of characteristic facial features, which can be subtle and difficult to objectively identify. To provide an automated and objective way to quantify these features, this paper proposes to take advantage of high-resolution 3D facial scans collected from a high-risk population. We present a method to automatically localize anatomical landmarks on each face, and align them to a standard space. Subsequent surface-based morphology analysis or anatomical measurements demands that such a method is both accurate and robust. The CNN-based model uses a novel differentiable spatial to numerical transform (DSNT) layer that could transform spatial activation to numerical values directly, which enables end-to-end training. Experiments reveal that the inserted layer helps to boost the performance and achieves sub-pixel level accuracy.
机译:妊娠期间的母醇消耗可导致广泛的身体和神经发育问题,统称为胎儿酒精谱紊乱(FASD)。在许多情况下,诊断严重依赖于识别一组特征面部特征,这可能是微妙的,难以客观地识别。提供一种自动化和客观方式来量化这些特征,本文提出利用从高风险群体收集的高分辨率3D面部扫描。我们介绍了一种方法来自动本地化每个面部的解剖标记,并将它们对准标准空间。随后的基于表面的形态学分析或解剖测量要求这种方法既准确又稳健。基于CNN的模型使用新颖的可微分空间到数值变换(DSNT)层,可以直接将空间激活转换为数值,这使得端到端训练能够。实验表明,插入的层有助于提高性能并实现子像素电平精度。

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