This paper presents our work in the FG 2017 Facial Expression Recognition and Analysis challenge (FERA 2017) and we participate in the AU occurrence sub-challenge. Our work of AU occurrence recognition is based on deep learning, and we design convolution neural network (CNN) models for two types of work: facial view recognition and AU occurrence recognition. For facial view recognition, our model could achieve 97.7% accuracy on validation dataset about 9 facial views. For AU occurrence recognition, we use both visual features and temporal information of dataset. We use CNN models to get deep visual feature and then use BLSTM-RNN to learn the high-level feature in the time domain. When training models, we divide dataset into 9 parts based on 9 facial views, and each model is trained in a specific view. When recognizing AUs, we recognize facial view first and then choose the corresponding model for AU occurrence recognition. Finally, our method shows good performance, the F1 score of test data is 0.507 and the accuracy is 0.735.