6533b834fe1ef96bd129d4ec
RESEARCH PRODUCT
Stress Detection from Speech Using Spectral Slope Measurements
Manolis TsiknakisManolis TsiknakisAnastasia PampouchidouGiorgos GiannakakisOlympia Simantirakisubject
Computer sciencebusiness.industry020206 networking & telecommunicationsProbability density functionPattern recognition02 engineering and technologyFundamental frequencySignalRandom forestEnergy operatorSpectral slopeClassifier (linguistics)0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligencebusinessWord (computer architecture)description
Automatic detection of emotional stress is an active research domain, which has recently drawn increasing attention, mainly in the fields of computer science, linguistics, and medicine. In this study, stress is automatically detected by employing speech-derived features. Related studies utilize features such as overall intensity, MFCCs, Teager Energy Operator, and pitch. The present study proposes a novel set of features based on the spectral tilt of the glottal source and of the speech signal itself. The proposed features rely on the Probability Density Function of the estimated spectral slopes, and consist of the three most probable slopes from the glottal source, as well as the corresponding three slopes of the speech signal, obtained on a word level. The performance of the proposed method is evaluated on the simulated dataset of the SUSAS corpus, achieving recognition accuracy of \(92.06\%\), when the Random Forests classifier is used.
year | journal | country | edition | language |
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2018-01-01 |