The feature fusion from separate source is the current technical difficulties of cross-corpus speech emotion recognition. The purpose of this paper is to, based on Deep Belief Nets (DBN) in Deep Learning, use the emotional information hiding in speech spectrum diagram (spectrogram) as image features and then implement feature fusion with the traditional emotion features. First, based on the spectrogram analysis by STB/Itti model, the new spectrogram features are extracted from the color, the brightness, and the orientation, respectively; then using two alternative DBN models they fuse the traditional and the spectrogram features, which increase the scale of the feature subset and the characterization ability of emotion. Through the experime...
Emotional prosody model building is very important for emotional speech synthesis. However, in the c...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Speech is an efficient agent to explicit attitude and emotions via language. The crucial task for th...
Feature extraction is a very important part in speech emotion recognition, and in allusion to featur...
Abstract Accurate emotion recognition from speech is important for applications like smart health c...
In order to overcome the limitation of single mode emotion recognition. This paper describes a novel...
Emotions are biological states of the human nervous system recorded in different signal forms that m...
To solve the problem of feature distribution discrepancy in cross-corpus speech emotion recognition ...
The redundant information, noise data generated in the process of single-modal feature extraction, a...
In the speech signal, emotion is considered one of the most critical elements. For the recognition o...
International audienceThe expression of emotions in human communication plays a very important role ...
This paper describes a revealing robust spectral feature for speech emotion recognition using Deep N...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
As one of the key issues in the field of emotional computing, emotion recognition has rich applicati...
Emotional prosody model building is very important for emotional speech synthesis. However, in the c...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Speech is an efficient agent to explicit attitude and emotions via language. The crucial task for th...
Feature extraction is a very important part in speech emotion recognition, and in allusion to featur...
Abstract Accurate emotion recognition from speech is important for applications like smart health c...
In order to overcome the limitation of single mode emotion recognition. This paper describes a novel...
Emotions are biological states of the human nervous system recorded in different signal forms that m...
To solve the problem of feature distribution discrepancy in cross-corpus speech emotion recognition ...
The redundant information, noise data generated in the process of single-modal feature extraction, a...
In the speech signal, emotion is considered one of the most critical elements. For the recognition o...
International audienceThe expression of emotions in human communication plays a very important role ...
This paper describes a revealing robust spectral feature for speech emotion recognition using Deep N...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
As one of the key issues in the field of emotional computing, emotion recognition has rich applicati...
Emotional prosody model building is very important for emotional speech synthesis. However, in the c...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Speech is an efficient agent to explicit attitude and emotions via language. The crucial task for th...