Department of Computer Science and Engineering, Korea University, Seoul, South Korea.
IT Department, University of Science and Technology of Southern Philippines, Cagayan de Oro, Philippines.
BMC Med Imaging. 2019 Apr 25;19(1):30. doi: 10.1186/s12880-019-0330-8.
Facial paralysis (FP) is a neuromotor dysfunction that losses voluntary muscles movement in one side of the human face. As the face is the basic means of social interactions and emotional expressions among humans, individuals afflicted can often be introverted and may develop psychological distress, which can be even more severe than the physical disability. This paper addresses the problem of objective facial paralysis evaluation.
We present a novel approach for objective facial paralysis evaluation and classification, which is crucial for deciding the medical treatment scheme. For FP classification, in particular, we proposed a method based on the ensemble of regression trees to efficiently extract facial salient points and detect iris or sclera boundaries. We also employ 2 degree polynomial of parabolic function to improve Daugman's algorithm for detecting occluded iris boundaries, thereby allowing us to efficiently get the area of the iris. The symmetry score of each face is measured by calculating the ratio of both iris area and the distances between the key points in both sides of the face. We build a model by employing hybrid classifier that discriminates healthy from unhealthy subjects and performs FP classification.
Objective analysis was conducted to evaluate the performance of the proposed method. As we explore the effect of data augmentation using publicly available datasets of facial expressions, experiments reveal that the proposed approach demonstrates efficiency.
Extraction of iris and facial salient points on images based on ensemble of regression trees along with our hybrid classifier (classification tree plus regularized logistic regression) provides a more improved way of addressing FP classification problem. It addresses the common limiting factor introduced in the previous works, i.e. having the greater sensitivity to subjects exposed to peculiar facial images, whereby improper identification of initial evolving curve for facial feature segmentation results to inaccurate facial feature extraction. Leveraging ensemble of regression trees provides accurate salient points extraction, which is crucial for revealing the significant difference between the healthy and the palsy side when performing different facial expressions.
面瘫(FP)是一种神经运动功能障碍,导致人面一侧的随意肌肉运动丧失。由于面部是人类进行社交互动和情感表达的基本方式,因此受影响的个体往往会变得内向,并可能发展出心理困扰,这种困扰可能比身体残疾更为严重。本文旨在解决面瘫的客观评估问题。
我们提出了一种新颖的客观面瘫评估和分类方法,这对于决定医疗方案至关重要。特别是对于 FP 分类,我们提出了一种基于回归树集成的方法,用于有效地提取面部显著点并检测虹膜或巩膜边界。我们还采用二次抛物函数的 2 次多项式改进 Daugman 算法来检测被遮挡的虹膜边界,从而有效地获取虹膜面积。通过计算面部两侧关键点之间的距离和虹膜面积的比值来测量每个面部的对称分数。我们通过使用混合分类器构建一个模型,该分类器可以区分健康和不健康的个体,并执行 FP 分类。
客观分析评估了所提出方法的性能。通过探索使用公共面部表情数据集进行数据增强的效果,实验表明该方法具有较高的效率。
基于回归树集成的虹膜和面部显著点提取以及我们的混合分类器(分类树加正则化逻辑回归)为解决 FP 分类问题提供了一种更为改进的方法。它解决了先前工作中常见的限制因素,即对面部图像中特有的面部特征初始演化曲线的识别具有更高的敏感性,这可能导致面部特征提取不准确。利用回归树集成提供了准确的显著点提取,这对于在进行不同面部表情时揭示健康侧和麻痹侧之间的显著差异至关重要。