机器学习在面部笔划检测中的应用

Chuan-Yu Chang, Man-Ju Cheng, M. Ma
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引用次数: 8

摘要

根据临床报告,年龄在60到79岁之间的人中风的风险很高。笔画最明显的面部特征是表情不对称,嘴巴歪斜。在这项研究中,我们提出了一个面部中风识别系统,以帮助患者进行自我判断。采用集合回归树(ERT)方法对面部特征点进行跟踪。计算眼、嘴左右两侧的面积比和距离比两个对称指标。局部三元模式(LTP)和Gabor滤波器分别用于增强和提取感兴趣区域(ROI)的纹理特征。计算了左右面ROI的结构相似度。然后,对原有的特征选择算法进行改进,选择出最优的特征集。采用支持向量机(SVM)、随机森林(RF)和贝叶斯分类器对面部笔划进行分类。实验结果表明,该系统能够准确有效地区分笔画和人脸图像。SVM、Random Forest和Bayes的识别准确率分别为100%、95.45%和100%。
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Application of Machine Learning for Facial Stroke Detection
According to clinical reports, people with ages between 60 to 79 years have a high risk of stroke. The most obvious facial features of stroke are expressional asymmetry and mouth askew. In this study, we proposed a facial stroke recognition system that assists patients in self-judgment. Facial landmarks were tracked by an ensemble of regression trees (ERT) method. Two symmetry indexes area ratio and distance ratio between the left and right side of the eye and mouth were calculated. Local Ternary Pattern (LTP) and Gabor filter were used to enhance and to extract the texture features of the region of interest (ROI), respectively. The structural similarity of ROI between the left and right face was calculated. After that, we modified the original feature selection algorithm to select the best feature set. To classify facial stroke, the Support Vector Machine (SVM), Random Forest (RF), and Bayesian Classifier were adopted as classifier. The experimental results show that the proposed system can accurately and effectively distinguish stroke from facial images. The recognition accuracy of SVM, Random Forest, and Bayes are 100%, 95.45%, and 100%, respectively.
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