(1. School of Computer and Information,Hefei University of Technology,Hefei 230601,China; 2. Graduate School of Advanced Technology and Science,University of Tokushima,Tokushima 7708502,Japan) 在知网中查找 在百度中查找 在本站中查找
Aiming at the problem of redundant features when using deep learning to extract facial expression im? age features,an improved Xception facial expression recognition network based on multi-layer perceptron(MLP)is proposed. In this model,the features extracted from the Xception network are input into the multi-layer perceptron for weighting,the main features are extracted,and the redundant features are filtered out so that the recognition accu? racy is improved. First,the image is scaled to 48*48,then the data set is enhanced,and these processed images are fed into the network model proposed in this paper. A comparison of ablation experiments show that:The correct rec? ognition rates of this model on the CK + dataset,JAFFE dataset,and MMI dataset are 98.991%,99.02% and 80.339% respectively. The correct recognition rates of Xception model on the CK + dataset,JAFFE dataset and MMI dataset are 97.4829%,90.476%,and 74.0678%,respectively. The correct recognition rates of the Xception + 2lay model on the CK + dataset,JAFFE dataset and MMI dataset are 98.04% and 74.0678%,84.06%,and 75.593%,re? spectively. By comparing the above ablation experiments,the recognition accuracy of this method is significantly bet? ter than the Xception model and the Xception + 2lay model. Compared with other models,the effectiveness of this model is also verified.