An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion Recognition
Feature extraction is an integral part in speech emotion recognition. Some emotions become indistinguishable from others due to high resemblance in their features, which results in low prediction accuracy. This paper analyses the impact of spectral contrast feature in increasing the accuracy for suc...
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International Association of Online Engineering (IAOE)
2021-06-01
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doaj-b106a430bd6d4d60b74d6281c7ceda722021-09-02T17:36:44ZengInternational Association of Online Engineering (IAOE)International Journal of Recent Contributions from Engineering, Science & IT2197-85812021-06-0192879510.3991/ijes.v9i2.229837995An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion RecognitionShreya Kumar0Swarnalaxmi Thiruvenkadam1College of engineering, GuindyCollege of engineering, GuindyFeature extraction is an integral part in speech emotion recognition. Some emotions become indistinguishable from others due to high resemblance in their features, which results in low prediction accuracy. This paper analyses the impact of spectral contrast feature in increasing the accuracy for such emotions. The RAVDESS dataset has been chosen for this study. The SAVEE dataset, CREMA-D dataset and JL corpus dataset were also used to test its performance over different English accents. In addition to that, EmoDB dataset has been used to study its performance in the German language. The use of spectral contrast feature has increased the prediction accuracy in speech emotion recognition systems to a good degree as it performs well in distinguishing emotions with significant differences in arousal levels, and it has been discussed in detail.<div> </div>https://online-journals.org/index.php/i-jes/article/view/22983chromafeature extractionmel frequency cepstral coefficientsmulti-layer perceptronspectral contrast |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shreya Kumar Swarnalaxmi Thiruvenkadam |
spellingShingle |
Shreya Kumar Swarnalaxmi Thiruvenkadam An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion Recognition International Journal of Recent Contributions from Engineering, Science & IT chroma feature extraction mel frequency cepstral coefficients multi-layer perceptron spectral contrast |
author_facet |
Shreya Kumar Swarnalaxmi Thiruvenkadam |
author_sort |
Shreya Kumar |
title |
An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion Recognition |
title_short |
An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion Recognition |
title_full |
An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion Recognition |
title_fullStr |
An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion Recognition |
title_full_unstemmed |
An Analysis of the Impact of Spectral Contrast Feature in Speech Emotion Recognition |
title_sort |
analysis of the impact of spectral contrast feature in speech emotion recognition |
publisher |
International Association of Online Engineering (IAOE) |
series |
International Journal of Recent Contributions from Engineering, Science & IT |
issn |
2197-8581 |
publishDate |
2021-06-01 |
description |
Feature extraction is an integral part in speech emotion recognition. Some emotions become indistinguishable from others due to high resemblance in their features, which results in low prediction accuracy. This paper analyses the impact of spectral contrast feature in increasing the accuracy for such emotions. The RAVDESS dataset has been chosen for this study. The SAVEE dataset, CREMA-D dataset and JL corpus dataset were also used to test its performance over different English accents. In addition to that, EmoDB dataset has been used to study its performance in the German language. The use of spectral contrast feature has increased the prediction accuracy in speech emotion recognition systems to a good degree as it performs well in distinguishing emotions with significant differences in arousal levels, and it has been discussed in detail.<div> </div> |
topic |
chroma feature extraction mel frequency cepstral coefficients multi-layer perceptron spectral contrast |
url |
https://online-journals.org/index.php/i-jes/article/view/22983 |
work_keys_str_mv |
AT shreyakumar ananalysisoftheimpactofspectralcontrastfeatureinspeechemotionrecognition AT swarnalaxmithiruvenkadam ananalysisoftheimpactofspectralcontrastfeatureinspeechemotionrecognition AT shreyakumar analysisoftheimpactofspectralcontrastfeatureinspeechemotionrecognition AT swarnalaxmithiruvenkadam analysisoftheimpactofspectralcontrastfeatureinspeechemotionrecognition |
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