The most common approaches to automatic emotion recognition rely on utterance-level prosodic features. Recent studies have shown that utterance-level statistics of segmental spectral features also contain rich information about expressivity and emotion. In our work we introduce a more fine-grained yet robust set of spectral features: statistics of Mel-Frequency Cepstral Coefficients computed over three phoneme type classes of interest – stressed vowels, unstressed vowels and consonants in the utterance. We investigate performance of our features in the task of speaker-independent emotion recognition using two publicly available datasets. Our experimental results clearly indicate that indeed both the richer set of spectral features and the d...
In this paper, we propose novel spectrally weighted mel-frequency cepstral coefficient (WMFCC) featu...
This thesis focuses on finding useful features for emotion recognition from speech signals. In compa...
“Emotion Recognition Using Speech Features” covers emotion-specific features present in speech and d...
The most common approaches to automatic emotion recognition rely on utterance-level prosodic feature...
In this brief, the authors discuss recently explored spectral (sub-segmental and pitch synchronous) ...
We propose the use of the line spectral frequency (LSF) features for emotion recognition from speech...
We present a speech signal driven emotion recognition system. Our system is trained and tested with ...
Recognizing human emotions/attitudes from speech cues has gained increased attention recently. Most ...
In this paper, we present a hybrid speech emotion recognition system exploiting both spectral and pr...
Feature extraction is an integral part in speech emotion recognition. Some emotions become indisting...
This work explores the effect of gender and linguistic-based vocal variations on the accuracy of emo...
In the context of the source-filter theory of speech, it is well established that intelligibility is...
Feature extraction is an integral part in speech emotion recognition. Some emotions become indisting...
Research works on combining emotions in intelligent machines are expanding and improving. Human’s sp...
We present a speech signal driven emotion recognition sys-tem. Our system is trained and tested with...
In this paper, we propose novel spectrally weighted mel-frequency cepstral coefficient (WMFCC) featu...
This thesis focuses on finding useful features for emotion recognition from speech signals. In compa...
“Emotion Recognition Using Speech Features” covers emotion-specific features present in speech and d...
The most common approaches to automatic emotion recognition rely on utterance-level prosodic feature...
In this brief, the authors discuss recently explored spectral (sub-segmental and pitch synchronous) ...
We propose the use of the line spectral frequency (LSF) features for emotion recognition from speech...
We present a speech signal driven emotion recognition system. Our system is trained and tested with ...
Recognizing human emotions/attitudes from speech cues has gained increased attention recently. Most ...
In this paper, we present a hybrid speech emotion recognition system exploiting both spectral and pr...
Feature extraction is an integral part in speech emotion recognition. Some emotions become indisting...
This work explores the effect of gender and linguistic-based vocal variations on the accuracy of emo...
In the context of the source-filter theory of speech, it is well established that intelligibility is...
Feature extraction is an integral part in speech emotion recognition. Some emotions become indisting...
Research works on combining emotions in intelligent machines are expanding and improving. Human’s sp...
We present a speech signal driven emotion recognition sys-tem. Our system is trained and tested with...
In this paper, we propose novel spectrally weighted mel-frequency cepstral coefficient (WMFCC) featu...
This thesis focuses on finding useful features for emotion recognition from speech signals. In compa...
“Emotion Recognition Using Speech Features” covers emotion-specific features present in speech and d...