Visible to the public Biblio

Filters: Author is Zhu, Jia  [Clear All Filters]
2019-12-30
Wang, XuMing, Huang, Jin, Zhu, Jia, Yang, Min, Yang, Fen.  2018.  Facial Expression Recognition with Deep Learning. Proceedings of the 10th International Conference on Internet Multimedia Computing and Service. :10:1–10:4.
Automatic recognition of facial expression images is a challenge for computer due to variation of expression, background, position and label noise. The paper propose a new method for static facial expression recognition. Main process is to perform experiments by FER-2013 dataset, the primary mission is using our CNN model to classify a set of static images into 7 basic emotions and then achieve effective classification automatically. The two preprocessing of the faces picture have enhanced the effect of the picture for recognition. First, FER datasets are preprocessed with standard histogram eqialization. Then we employ ImageDataGenerator to deviate and rotate the facial image to enhance model robustness. Finally, the result of softmax activation function (also known as multinomial logistic regression) is stacked by SVM. The result of softmax activation function + SVM is better than softmax activation function. The accuracy of facial expression recognition achieve 68.79% on the test set.