基于支持向量机和神经网络的面部表情分类识别方法

Muhamad Fatchan, Mauridhi Hery Purnomo, Affandy, A. Zainul Fanani, Linda Marlinda
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引用次数: 1

摘要

人脸情绪检测的障碍之一是缺乏基于相机的人脸情绪表达过程分析。在大多数情况下,识别特征并实现不同的特征组合可以提高准确性。通过使用包含面部情绪的高维特征向量进行试验检测,可以提供大量关于数据准确性的信息。本研究的目的是通过比较支持向量机和神经网络算法来确定最高精度的结果。可以看出,支持向量机的准确率值最高,为87%,而神经网络算法的准确率仅为85%。ROC曲线结果表明,支持向量机的AUC值最好,为0.97。神经网络算法与支持向量机预测情绪的比较,使用的数据类型包括愤怒、悲伤、快乐和惊讶等多种情绪。支持向量机方法是一种精确的算法,与其他方法相比,它也具有很大的优势。从准确性、AUC和t检验方法来看,该方法属于最佳分类。
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Support Vector Machine and Neural Network Algorithm Approach to Classifying Facial Expression Recognition
One of the obstacles to detecting facial emotions is the lack of analysis in the process of emotional expression on human faces based on a photo camera. Identifying features and implementing different feature combinations can improve accuracy, in most cases. Trial detection through the use of feature vectors with higher dimensions that contain facial emotions can provide a lot of information on the accuracy of the data. The purpose of this study is to determine the highest accuracy results from the comparison of Support Vector Machine and Neural Network Algorithms. It can be seen that the Support Vector Machine has the highest accuracy value, which is 87%, while the Neural Network algorithm only has an accuracy of 85%. The results of the ROC Curve show that the Support Vector Machine achieves the best AUC value, namely 0.97. Comparison between Neural Network algorithm and Support Vector Machine for prediction of emotions using data types with many variations of emotions including anger, sadness, happy and surprise. The Support Vector Machine method is an accurate algorithm and this method is also very dominant over other methods. Based on the Accuracy, AUC, and T-test method, this method falls into the best classification.
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