Affiliation:
1. Zhengzhou University of Light Industry
Abstract
Abstract
Aiming at the problem that face images are easily interfered by occlusion factors in uncontrollable environments, and the complex structure of traditional convolutional neural networks leads to low expression recognition rates, slow network convergence speed, and long network training time, an improved lightweight convolutional neural network is proposed for facial expression recognition algorithm. First, the dilation convolution is introduced into the shortcut connection of the inverted residual structure in the MobileNetV3 network to expand the receptive field of the convolution kernel and reduce the loss of expression features. Then, the channel attention mechanism SENet in the network is replaced by the two-dimensional (channel and spatial) attention mechanism SimAM introduced without parameters to reduce the network parameters. Finally, in the normalization operation, the Batch Normalization of the backbone network is replaced with Group Normalization, which is stable at various batch sizes, to reduce errors caused by processing small batches of data. Experimental results on RaFD, FER2013, and FER2013 face expression databases show that the network reduces the training times while maintaining network accuracy, improves network convergence speed, and has good convergence effects.
Publisher
Research Square Platform LLC
Reference34 articles.
1. New research advances in facial expression recognition under partial occlusion;Jiang B;Comput. Eng. Appl.,2022
2. Facial expression recognition by merging multilayer features of lightweight convolutional networks;Shen H;Laser & Optoelectronics Progress,2021
3. An improved SIFT algorithm for robust emotion recognition under various face poses and illuminations;Shi Y;Neural Comput. Appl.,2020
4. P. Kumar, S.L. Happy, A. Routray A real-time robust facial expression recognition system using HOG features. 2016 International Conference on Computing, Analytics and, S. Trends, (CAST), Pune, India, 2016
5. Facial expression recognition based on local binary patterns and kernel discriminant isomap;Zhao X;Sensors,2011