论文标题
使用基于StyleGAN的模型适应技术对裂口面的无监督异常评估
Unsupervised Anomaly Appraisal of Cleft Faces Using a StyleGAN2-based Model Adaptation Technique
论文作者
论文摘要
本文提出了一个新型的机器学习框架,以始终检测,本地化和评估人脸上的先天性裂口异常。目的是提供与人类判断相匹配的面部差异和重建手术结果的普遍,客观的度量。所提出的方法采用模型适应的stylegan2生成对抗网络来产生受peft裂面孔的归一化转换,以便使用像素的减法方法随后测量畸形。所提出的框架的完整管道包括以下步骤:图像预处理,面部归一化,颜色转化,形态侵蚀,热图产生和异常评分。通过利用所考虑的框架的特征,提出了精细识别解剖异常的热图。提出的框架通过计算机模拟和包含人类评级的调查进行验证。所提出的计算机模型所产生的异常得分与人体面部差异的评分密切相关,导致0.942 Pearson的R得分。
This paper presents a novel machine learning framework to consistently detect, localize and rate congenital cleft lip anomalies in human faces. The goal is to provide a universal, objective measure of facial differences and reconstructive surgical outcomes that matches human judgments. The proposed method employs the StyleGAN2 generative adversarial network with model adaptation to produce normalized transformations of cleft-affected faces in order to allow for subsequent measurement of deformity using a pixel-wise subtraction approach. The complete pipeline of the proposed framework consists of the following steps: image preprocessing, face normalization, color transformation, morphological erosion, heat-map generation and abnormality scoring. Heatmaps that finely discern anatomic anomalies are proposed by exploiting the features of the considered framework. The proposed framework is validated through computer simulations and surveys containing human ratings. The anomaly scores yielded by the proposed computer model correlate closely with the human ratings of facial differences, leading to 0.942 Pearson's r score.