In one study on vocal emotion recognition using noise-vocoded speech (NVS), the high similarities between modulation spectral features (MSFs) and the results of vocal-emotion-recognition experiments indicated that MSFs contribute to vocal emotion recognition in a clean environment (with no noise and no reverberation). Other studies also clarified that vocal emotion recognition using NVS is not affected by noisy reverberant environments (signal-to-noise ratio is greater than 10 dB and reverberation time is less than 1.0 s). However, the contribution of MSFs to vocal emotion recognition in noisy reverberant environments is still unclear. We aimed to clarify whether MSFs can be used to explain the vocal-emotion-recognition results in noisy rev...
We present a comprehensive study on the effect of reverberation and background noise on the recognit...
Abstract The performance of automatic speech recognition systems degrades in the presence of emotion...
The most common approaches to automatic emotion recognition rely on utterance-level prosodic feature...
The current study investigated why the intelligibility of expressive speech in noise varies as a fun...
In the context of the source-filter theory of speech, it is well established that intelligibility is...
Speech perception is a fundamental function of successful vocal communication, and through prosody, ...
This study explored the temporal course of vocal and emotional sound processing. Participants detect...
In this brief, the authors discuss recently explored spectral (sub-segmental and pitch synchronous) ...
Copyright © 2011 Felix Weninger et al. This is an open access article distributed under the Creative...
This paper describes an efficiency of chroma based tonal features for speech emotion recognition. As...
In this thesis, voice signal is investigated with the aim of characterizing subjects' emotional stat...
Many animal vocalizations contain nonlinear acoustic phenomena as a consequence of physiological aro...
The expression of emotion is an inherent aspect in singing, especially in operatic voice. Yet, adver...
The expression of emotion is an inherent aspect in singing, especially in operatic voice. Yet, adver...
We present a speech signal driven emotion recognition system. Our system is trained and tested with ...
We present a comprehensive study on the effect of reverberation and background noise on the recognit...
Abstract The performance of automatic speech recognition systems degrades in the presence of emotion...
The most common approaches to automatic emotion recognition rely on utterance-level prosodic feature...
The current study investigated why the intelligibility of expressive speech in noise varies as a fun...
In the context of the source-filter theory of speech, it is well established that intelligibility is...
Speech perception is a fundamental function of successful vocal communication, and through prosody, ...
This study explored the temporal course of vocal and emotional sound processing. Participants detect...
In this brief, the authors discuss recently explored spectral (sub-segmental and pitch synchronous) ...
Copyright © 2011 Felix Weninger et al. This is an open access article distributed under the Creative...
This paper describes an efficiency of chroma based tonal features for speech emotion recognition. As...
In this thesis, voice signal is investigated with the aim of characterizing subjects' emotional stat...
Many animal vocalizations contain nonlinear acoustic phenomena as a consequence of physiological aro...
The expression of emotion is an inherent aspect in singing, especially in operatic voice. Yet, adver...
The expression of emotion is an inherent aspect in singing, especially in operatic voice. Yet, adver...
We present a speech signal driven emotion recognition system. Our system is trained and tested with ...
We present a comprehensive study on the effect of reverberation and background noise on the recognit...
Abstract The performance of automatic speech recognition systems degrades in the presence of emotion...
The most common approaches to automatic emotion recognition rely on utterance-level prosodic feature...