Speech emotion recognition (SER) is a complicated and challenging task in the human-computer interaction because it is difficult to find the best feature set to discriminate the emotional state entirely. We always used the FFT to handle the raw signal in the process of extracting the low-level description features, such as short-time energy, fundamental frequency, formant, MFCC (mel frequency cepstral coefficient) and so on. However, these features are built on the domain of frequency and ignore the information from temporal domain. In this paper, we propose a novel framework that utilizes multi-layers wavelet sequence set from wavelet packet reconstruction (WPR) and conventional feature set to constitute mixed feature set for achieving the...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Speech Emotion Recognition (SER) poses a significant challenge with promising applications in psycho...
During recent years, the field of emotional content analysis of speech signals has been gaining a lo...
Speech emotion recognition (SER) is a complicated and challenging task in the human-computer interac...
Speech Emotion Recognition (SER) is the task of recognizing a speaker’s emotional state from speech....
In this paper, authors tried to develop reduced combinational features for emotional speech recognit...
The speech signal is an important tool for conveying information between humans; at the same time, i...
In this paper, wavelet packet entropy is proposed for speaker-independent emotion detection from spe...
Emotions are quite important in our daily communications and recent years have witnessed a lot of re...
Abstract Speech emotion classification (SEC) has gained the utmost height and occupied a conspicuous...
In the last years, there has a great progress in automatic speech recognition. The challenge now it ...
Many researchers are inspired by studying Speech Emotion Recognition (SER) because it is considered ...
Three new methods of feature extraction based on time-frequency analysis of speech are presented and...
In this paper, an automatic speech emotion recognition (SER) task of classifying eight different emo...
Speech emotion recognition is a challenging task, and extensive reliance has been placed on models t...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Speech Emotion Recognition (SER) poses a significant challenge with promising applications in psycho...
During recent years, the field of emotional content analysis of speech signals has been gaining a lo...
Speech emotion recognition (SER) is a complicated and challenging task in the human-computer interac...
Speech Emotion Recognition (SER) is the task of recognizing a speaker’s emotional state from speech....
In this paper, authors tried to develop reduced combinational features for emotional speech recognit...
The speech signal is an important tool for conveying information between humans; at the same time, i...
In this paper, wavelet packet entropy is proposed for speaker-independent emotion detection from spe...
Emotions are quite important in our daily communications and recent years have witnessed a lot of re...
Abstract Speech emotion classification (SEC) has gained the utmost height and occupied a conspicuous...
In the last years, there has a great progress in automatic speech recognition. The challenge now it ...
Many researchers are inspired by studying Speech Emotion Recognition (SER) because it is considered ...
Three new methods of feature extraction based on time-frequency analysis of speech are presented and...
In this paper, an automatic speech emotion recognition (SER) task of classifying eight different emo...
Speech emotion recognition is a challenging task, and extensive reliance has been placed on models t...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Speech Emotion Recognition (SER) poses a significant challenge with promising applications in psycho...
During recent years, the field of emotional content analysis of speech signals has been gaining a lo...