Double Fourier analysis for Emotion Identification in Voiced Speech
Fecha
2016-01-01
Autores
Sierra-Sosa, D.
Bastidas, M.
Ortiz, P.D.
Quintero, O.L.
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ISSN de la revista
Título del volumen
Editor
IOP PUBLISHING LTD
Resumen
We propose a novel analysis alternative, based on two Fourier Transforms for emotion recognition from speech. Fourier analysis allows for display and synthesizes different signals, in terms of power spectral density distributions. A spectrogram of the voice signal is obtained performing a short time Fourier Transform with Gaussian windows, this spectrogram portraits frequency related features, such as vocal tract resonances and quasi-periodic excitations during voiced sounds. Emotions induce such characteristics in speech, which become apparent in spectrogram time-frequency distributions. Later, the signal time-frequency representation from spectrogram is considered an image, and processed through a 2-dimensional Fourier Transform in order to perform the spatial Fourier analysis from it. Finally features related with emotions in voiced speech are extracted and presented.