- Journal of Scientific Reports-A
- Issue:049
- FACIAL EXPRESSION RECOGNITION on PARTIAL FACE IMAGES USING DEEP TRANSFER LEARNING
FACIAL EXPRESSION RECOGNITION on PARTIAL FACE IMAGES USING DEEP TRANSFER LEARNING
Authors : İsmail ÖZTEL, Gozde YOLCU ÖZTEL, Veysel Harun ŞAHİN
Pages : 118-129
View : 11 | Download : 9
Publication Date : 2022-06-30
Article Type : Research Paper
Abstract :Facial expression recognition has a crucial role in communication. Computerized facial expression recognition systems have been developed for many purposes. People`s faces can have occlusions because of scarves, facial masks, etc. in cases such as cold weather conditions or Covid-19 pandemic conditions. In this case, facial expression recognition can be challenging for automated systems. This study classifies facial images containing only the eyebrow and eye regions over six expressions with a deep learning-based approach. For this purpose, Radboud Face Database images have been used after cropping the area that includes eye and eyebrow regions. Some popular pre-trained networks have been trained and tested using the transfer learning approach. The Vgg19 pre-trained network achieved 91.33% accuracy over the six universal facial expressions. The experiments show that automated facial expression recognition can be applied with high performance by looking at the region containing eyes and eyebrowsKeywords : Convolutional Neural Networks, Deep Learning, Facial Expression Recognition, Transfer Learning