In order to overcome the limitation of single mode emotion recognition. This paper describes a novel multimodal emotion recognition algorithm, and takes speech signal and facial expression signal as the research subjects. First, fuse the speech signal feature and facial expression signal feature, get sample sets by putting back sampling, and then get classifiers by BP neural network (BPNN). Second, measure the difference between two classifiers by double error difference selection strategy. Finally, get the final recognition result by the majority voting rule. Experiments show the method improves the accuracy of emotion recognition by giving full play to the advantages of decision level fusion and feature level fusion, and makes the whole f...
The predominant communication channel to convey relevant and high impact information is the emotions...
The feature fusion from separate source is the current technical difficulties of cross-corpus speech...
International audienceThis paper presents a multimodal system for dimensional emotion detection, tha...
Emotion plays an important role in human communications. We construct a framework for multi-modal fu...
International audienceAutomatic emotion recognition enhance dramatically the development of human/ma...
Emotion recognition has important applications in human-computer interaction. Various sources such a...
The redundant information, noise data generated in the process of single-modal feature extraction, a...
Affect (emotion) recognition has many applications, such as human assistive robotics, human computer...
Emotion recognition has become one of the most researched subjects in the scientific community, espe...
Humans express their emotions in a variety of ways, which inspires research on multimodal fusion-bas...
The understanding of a psychological phenomena such as emotion is of paramount importance for psycho...
In this paper we present a multimodal approach for the recognition of eight emotions that integrates...
Multimodal emotion recognition has gained traction in affective computing research community to over...
Emotion is expressed and perceived through multiple modalities. In this work, we model face, voice a...
Automatic emotion recognition is a challenging task since emotion is communicated through different ...
The predominant communication channel to convey relevant and high impact information is the emotions...
The feature fusion from separate source is the current technical difficulties of cross-corpus speech...
International audienceThis paper presents a multimodal system for dimensional emotion detection, tha...
Emotion plays an important role in human communications. We construct a framework for multi-modal fu...
International audienceAutomatic emotion recognition enhance dramatically the development of human/ma...
Emotion recognition has important applications in human-computer interaction. Various sources such a...
The redundant information, noise data generated in the process of single-modal feature extraction, a...
Affect (emotion) recognition has many applications, such as human assistive robotics, human computer...
Emotion recognition has become one of the most researched subjects in the scientific community, espe...
Humans express their emotions in a variety of ways, which inspires research on multimodal fusion-bas...
The understanding of a psychological phenomena such as emotion is of paramount importance for psycho...
In this paper we present a multimodal approach for the recognition of eight emotions that integrates...
Multimodal emotion recognition has gained traction in affective computing research community to over...
Emotion is expressed and perceived through multiple modalities. In this work, we model face, voice a...
Automatic emotion recognition is a challenging task since emotion is communicated through different ...
The predominant communication channel to convey relevant and high impact information is the emotions...
The feature fusion from separate source is the current technical difficulties of cross-corpus speech...
International audienceThis paper presents a multimodal system for dimensional emotion detection, tha...