This study investigates the effectiveness of speech emotion recognition using a new approach called the Optimized Multi-Channel Deep Neural Network (OMC-DNN), The proposed method has been tested with input features given as simple 2D black and white images representing graphs of the MFCC coefficients or the TEO parameters calculated either from speech (MFCC-S, TEO-S) or glottal waveforms (MFCC-G, TEO-G). A comparison with 6 different single-channel benchmark classifiers has shown that the OMC-DNN provided the best performance in both pair-wise (emotion vs. neutral) and simultaneous multiclass recognition of 7 emotions (anger, boredom, disgust, happiness, fear, sadness and neutral). In the pair-wise case, the OMC-DNN outperformed the single-...
Feature extraction is a very important part in speech emotion recognition, and in allusion to featur...
The existing research on emotion recognition commonly uses mel spectrogram (MelSpec) and Geneva mini...
Emotion recognition has become one of the most researched subjects in the scientific community, espe...
Speech emotion recognition (SER) is currently a research hotspot due to its challenging nature but b...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
An assortment of techniques has been presented in the area of Speech Emotion Recognition (SER), wher...
Abstract Automatic affect recognition is a challenging task due to the various modalities emotions ...
This research proposes a speech emotion recognition model to predict human emotions using the convol...
The goal of the project is to detect the speaker's emotions while he or she speaks. Speech generated...
In making the Machines Intelligent, and enable them to work as human, Speech recognition is one of t...
This paper describes a revealing robust spectral feature for speech emotion recognition using Deep N...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
This research proposes a speech emotion recognition model to predict human emotions using the convol...
In today's day and age of digital assistants there is a whole new avenue of data that is not being t...
Feature extraction is a very important part in speech emotion recognition, and in allusion to featur...
The existing research on emotion recognition commonly uses mel spectrogram (MelSpec) and Geneva mini...
Emotion recognition has become one of the most researched subjects in the scientific community, espe...
Speech emotion recognition (SER) is currently a research hotspot due to its challenging nature but b...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
An assortment of techniques has been presented in the area of Speech Emotion Recognition (SER), wher...
Abstract Automatic affect recognition is a challenging task due to the various modalities emotions ...
This research proposes a speech emotion recognition model to predict human emotions using the convol...
The goal of the project is to detect the speaker's emotions while he or she speaks. Speech generated...
In making the Machines Intelligent, and enable them to work as human, Speech recognition is one of t...
This paper describes a revealing robust spectral feature for speech emotion recognition using Deep N...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
This research proposes a speech emotion recognition model to predict human emotions using the convol...
In today's day and age of digital assistants there is a whole new avenue of data that is not being t...
Feature extraction is a very important part in speech emotion recognition, and in allusion to featur...
The existing research on emotion recognition commonly uses mel spectrogram (MelSpec) and Geneva mini...
Emotion recognition has become one of the most researched subjects in the scientific community, espe...