Manuela Bastidas

Assistant Professor


Curriculum vitae



Department of mathematics

Universidad Nacional de Colombia, Medellín

Medellín, Colombia



Multiresolution analysis (discrete wavelet transform) through Daubechies family for emotion recognition in speech.


Journal article


D. Campo, M. Bastidas, O. Quintero
arXiv.org, 2016

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APA   Click to copy
Campo, D., Bastidas, M., & Quintero, O. (2016). Multiresolution analysis (discrete wavelet transform) through Daubechies family for emotion recognition in speech. ArXiv.org.


Chicago/Turabian   Click to copy
Campo, D., M. Bastidas, and O. Quintero. “Multiresolution Analysis (Discrete Wavelet Transform) through Daubechies Family for Emotion Recognition in Speech.” arXiv.org (2016).


MLA   Click to copy
Campo, D., et al. “Multiresolution Analysis (Discrete Wavelet Transform) through Daubechies Family for Emotion Recognition in Speech.” ArXiv.org, 2016.


BibTeX   Click to copy

@article{d2016a,
  title = {Multiresolution analysis (discrete wavelet transform) through Daubechies family for emotion recognition in speech.},
  year = {2016},
  journal = {arXiv.org},
  author = {Campo, D. and Bastidas, M. and Quintero, O.}
}

Abstract

We propose a study of the mathematical properties of voice as an audio signal. This work includes signals in which the channel conditions are not ideal for emotion recognition. Multiresolution analysis- discrete wavelet transform – was performed through the use of Daubechies Wavelet Family (Db1-Haar, Db6, Db8, Db10) allowing the decomposition of the initial audio signal into sets of coefficients on which a set of features was extracted and analyzed statistically in order to differentiate emotional states. ANNs proved to be a system that allows an appropriate classification of such states. This study shows that the extracted features using wavelet decomposition are enough to analyze and extract emotional content in audio signals presenting a high accuracy rate in classification of emotional states without the need to use other kinds of classical frequency-time features. Accordingly, this paper seeks to characterize mathematically the six basic emotions in humans: boredom, disgust, happiness, anxiety, anger and sadness, also included the neutrality, for a total of seven states to identify.


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