A random forest algorithm-based emotion recognition model for eye features

Hong Feng, Xunbing Shen
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引用次数: 1

Abstract

Objective: To develop a random forest algorithm-based model for the recognition of angry, neutral, and happy emotions for eye features and to further analyze the importance of eye features. Method: Raw data were obtained using emotional images from the Chinese Emotional Face System (CAFPS), and the code was used to derive relevant eye features data to build the database. The relevant features were left and right pupil size, left and right visible iris size, Distance between inner corners of eyes, upper and lower eyelid distance, left eye opening and closing, AU1 (inner eyebrow raised), AU2 (outer eyebrow raised), AU4 (overall lowered eyebrow), AU5 (raised upper eyelid), AU6 (raised cheek) and AU7 (eye constriction), a total of 13 eye features, were used to construct an emotion recognition model using the random forest algorithm and to analyze the importance of the features. Results: The differences were statistically significant (p<0.01) in all 13 eye features; the accuracy of the model constructed using the random forest algorithm was 70.2%, the recall was 0.702, the accuracy was 0.977 and the F1 was 0.809. AU6 had the highest importance in the process of constructing the model, accounting for 15.4%. Conclusion: Eye features have a role in the process of building an emotion recognition model, validating the theories related to Chinese medicine eye diagnosis, and combining Chinese medicine eye diagnosis with theories related to Chinese medicine emotions to identify patients' emotions by capturing eye information, which has clinical practice implications.
基于随机森林算法的眼部特征情感识别模型
目的:建立基于随机森林算法的眼睛特征愤怒、中性和快乐情绪识别模型,并进一步分析眼睛特征的重要性。方法:利用中国情绪人脸系统(CAFPS)中的情绪图像获取原始数据,利用代码提取相关眼特征数据建立数据库。相关特征为左右瞳孔大小、左右可见虹膜大小、眼内角距离、上下眼睑距离、左眼开合、AU1(内眉抬高)、AU2(外眉抬高)、AU4(整体下眉)、AU5(上眼睑抬高)、AU6(脸颊抬高)、AU7(眼睛收缩),共13个眼部特征。利用随机森林算法构建了情感识别模型,并分析了特征的重要性。结果:13项眼部特征差异均有统计学意义(p<0.01);随机森林算法构建的模型准确率为70.2%,召回率为0.702,准确率为0.977,F1为0.809。AU6在模型构建过程中的重要性最高,占15.4%。结论:眼部特征在构建情绪识别模型、验证中医眼诊相关理论、将中医眼诊与中医情绪相关理论相结合,通过捕捉眼部信息识别患者情绪的过程中具有一定的作用,具有临床实践意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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