TY - GEN
T1 - Parameters Research of Facial Emotion Detection Algorithm Based on Machine Learning
AU - Zhou, Ting
AU - Yadav, Amit
AU - Shi, Xiao Jiang
AU - Khan, Asif
PY - 2024
Y1 - 2024
N2 - The purpose of emotional state recognition is to let computers have the ability to analyze and understand human emotions and intentions, and deeply analyze human psychological activities, so as to play a role in the fields of entertainment, education, intelligent medical treatment and so on. Different emotion recognition algorithms and different parameters of the same algorithm have different recognition effects. Among them, muscle-based feature model and 68 feature point calibration are two common face emotion recognition methods. The former uses deep learning to judge the emotional state by analyzing the movement of face muscles, while the latter calculates various feature parameters through the position relationship of 68 key points of the face, and then judges the emotional state. This paper mainly discusses the calibration method of 68 feature points. Through the use of two machine learning algorithms (KNN, SVM) and the study of different parameters in the algorithm, the influence of different parameters on the emotion recognition effect is compared and analyzed. The experiment proves that by detecting 68 key points of face, we can find the optimal parameter value in the current classification task.
AB - The purpose of emotional state recognition is to let computers have the ability to analyze and understand human emotions and intentions, and deeply analyze human psychological activities, so as to play a role in the fields of entertainment, education, intelligent medical treatment and so on. Different emotion recognition algorithms and different parameters of the same algorithm have different recognition effects. Among them, muscle-based feature model and 68 feature point calibration are two common face emotion recognition methods. The former uses deep learning to judge the emotional state by analyzing the movement of face muscles, while the latter calculates various feature parameters through the position relationship of 68 key points of the face, and then judges the emotional state. This paper mainly discusses the calibration method of 68 feature points. Through the use of two machine learning algorithms (KNN, SVM) and the study of different parameters in the algorithm, the influence of different parameters on the emotion recognition effect is compared and analyzed. The experiment proves that by detecting 68 key points of face, we can find the optimal parameter value in the current classification task.
KW - Algorithm parameters
KW - emotion recognition
KW - Machine learning
UR - http://www.scopus.com/inward/record.url?scp=85205571546&partnerID=8YFLogxK
U2 - 10.1109/APCIT62007.2024.10673529
DO - 10.1109/APCIT62007.2024.10673529
M3 - Conference Paper published in Proceedings
AN - SCOPUS:85205571546
SN - 9798350361544
T3 - 2024 Asia Pacific Conference on Innovation in Technology, APCIT 2024
SP - 1
EP - 6
BT - 2024 Asia Pacific Conference on Innovation in Technology, APCIT 2024
PB - IEEE, Institute of Electrical and Electronics Engineers
CY - New York
T2 - 2024 Asia Pacific Conference on Innovation in Technology, APCIT 2024
Y2 - 26 July 2024 through 27 July 2024
ER -