End-to-End Multimodal Emotion Recognition Using Deep Neural Networks 论文

2017IEEE Journal of Selected Topics in Signal Processing引用 719
Emotion and Mood RecognitionColor perception and designVideo Analysis and Summarization

详细信息

发表期刊/会议
IEEE Journal of Selected Topics in Signal Processing
发表日期
2017-10-18
发表年份
2017

关键词

Emotion and Mood RecognitionColor perception and designVideo Analysis and Summarization

摘要

Automatic affect recognition is a challenging task due to the various modalities emotions can be expressed with. Applications can be found in many domains including multimedia retrieval and human-computer interaction. In recent years, deep neural networks have been used with great success in determining emotional states. Inspired by this success, we propose an emotion recognition system using auditory and visual modalities. To capture the emotional content for various styles of speaking, robust features need to be extracted. To this purpose, we utilize a convolutional neural network (CNN) to extract features from the speech, while for the visual modality a deep residual network of 50 layers is used. In addition to the importance of feature extraction, a machine learning algorithm needs also to be insensitive to outliers while being able to model the context. To tackle this problem, long short-term memory networks are utilized. The system is then trained in an end-to-end fashion where-by also taking advantage of the correlations of each of the streams-we manage to significantly outperform, in terms of concordance correlation coefficient, traditional approaches based on auditory and visual handcrafted features for the prediction of spontaneous and natural emotions on the RECOLA database of the AVEC 2016 research challenge on emotion recognition.