Affiliation:
1. Engineering University of PAP
Abstract
Abstract
This paper proposes an improved strategy for the MobileNetV2 neural network(I-MobileNetV2) in response to problems such as large parameter quantities in existing deep convolutional neural networks and the shortcomings of the lightweight neural network MobileNetV2 such as easy loss of feature information, poor real-time performance, and low accuracy rate in facial emotion recognition tasks. The network inherits the characteristics of MobilenetV2 depthwise separated convolution, signifying a reduction in computational load while maintaining a lightweight profile. It utilizes a reverse fusion mechanism to retain negative features, which makes the information less likely to be lost. The SELU activation function is used to replace the RELU6 activation function to avoid gradient vanishing. Meanwhile, to improve the feature recognition capability, the channel attention mechanism (Squeeze-and-Excitation Networks (SE-Net)) is integrated into the MobilenetV2 network. Experiments conducted on the facial expression datasets FER2013 and CK + showed that the proposed network model achieved facial expression recognition accuracies of 68.62% and 95.96%, improving upon the MobileNetV2 model by 0.72% and 6.14% respectively, and the parameter count decreased by 83.8%. These results empirically verify the effectiveness of the improvements made to the network model.
Publisher
Research Square Platform LLC
Reference31 articles.
1. A comprehensive review of facial expression recognition techniques;Adyapady RR;Multimedia Systems,2023
2. Facial expression recognition based on deep learning;Ge H;Computer Methods and Programs in Biomedicine,2022
3. Savchenko A V. Personalized frame-level facial expression recognition in video. International Conference on Pattern Recognition and Artificial Intelligence. Cham: Springer International Publishing. 447–458(2022).
4. Automated recognition of pain in cats;Feighelstein M;Scientific Reports,2022
5. Real-time fatigue driving detection system based on multi-module fusion;Jia H;Computers & Graphics,2022