Visible to the public Facial Expression Recognition Using Merged Convolution Neural Network

TitleFacial Expression Recognition Using Merged Convolution Neural Network
Publication TypeConference Paper
Year of Publication2019
AuthorsLiu, Keng-Cheng, Hsu, Chen-Chien, Wang, Wei-Yen, Chiang, Hsin-Han
Conference Name2019 IEEE 8th Global Conference on Consumer Electronics (GCCE)
Date Publishedoct
Keywordscamera, CNN, convolution, convolution neural network, convolutional neural nets, emotion recognition, face recognition, facial expression recognition, facial recognition, feature extraction, FER, Human Behavior, human factors, image capture, image preprocessing, image recognition, MCNN, merged convolution neural network, Metrics, Neural networks, pubcrawl, Real-time Systems, resilience, Resiliency, statistical analysis, statistical method, Training
Abstract

In this paper, a merged convolution neural network (MCNN) is proposed to improve the accuracy and robustness of real-time facial expression recognition (FER). Although there are many ways to improve the performance of facial expression recognition, a revamp of the training framework and image preprocessing renders better results in applications. When the camera is capturing images at high speed, however, changes in image characteristics may occur at certain moments due to the influence of light and other factors. Such changes can result in incorrect recognition of human facial expression. To solve this problem, we propose a statistical method for recognition results obtained from previous images, instead of using the current recognition output. Experimental results show that the proposed method can satisfactorily recognize seven basic facial expressions in real time.

DOI10.1109/GCCE46687.2019.9015479
Citation Keyliu_facial_2019