Comparison of different convolution neural network architectures for the solution of the problem of emotion recognition by facial expression

13 Sept 2018, 17:00
15m
406A

406A

Sectional reports 11. Big data Analytics, Machine learning 11. Big data Analytics, Machine learning

Speaker

Mr Anton Vorontsov (-)

Description

In this paper the usage of convolution neural networks considers for solving the problem of emotion recognition by face expression images. Emotion recognition is a complex task and the result of recognition is highly dependent on the choice of the neural network architecture. In this paper various architectures of convolutional neural networks were reviewed and there were selected the most prospective architectures. The training experiments were conducted on selected neural networks. The proposed neural network architectures were trained on the AffectNet dataset, widely used for emotion recognition experiments. A comparison of the proposed neural network architectures was made using the following metrics: accuracy, precision, recall and training speed. At the end of this paper the comparative analysis was made and obtained results were overviewed.

Primary authors

Prof. Alexey Averkin (Informatics and Control Research Institute of Russian Academy of Sciences) Mr Anton Vorontsov (-)

Presentation materials