Bipolar disorders are characterized by an unpredictable behavior, resulting in depressive, hypomanic or manic episodes alternating with euthymic states. A multi-parametric approach can be followed to estimate mood states by integrating information coming from different physiological signals and from the analysis of voice. In this work we propose an algorithm to estimate speech features from running speech with the aim of characterizing the mood state in bipolar patients. This algorithm is based on an automatic segmentation of speech signals to detect voiced segments, and on a spectral matching approach to estimate pitch and pitch changes. In particular average pitch, jitter and pitch standard deviation within each voiced segment, are estimated. The performances of the algorithm are evaluated on a speech database, which includes an electroglottographic signal. A preliminary analysis on subjects affected by bipolar disorders is performed and results are discussed.

Speech analysis for mood state characterization in bipolar patients / VANELLO, NICOLA; Guidi A; Gentili C; Werner S; Bertschy G; VALENZA, GAETANO; LANATA', ANTONIO; SCILINGO, ENZO PASQUALE. - ELETTRONICO. - (2012), pp. 2104-2107. (Intervento presentato al convegno 34th Annual International Conference of IEEE Engineering in Medicine and Biology Society tenutosi a San Diego, California, USA nel 28/08/2012-01/09/2012) [10.1109/EMBC.2012.6346375].

Speech analysis for mood state characterization in bipolar patients

LANATA', ANTONIO;
2012

Abstract

Bipolar disorders are characterized by an unpredictable behavior, resulting in depressive, hypomanic or manic episodes alternating with euthymic states. A multi-parametric approach can be followed to estimate mood states by integrating information coming from different physiological signals and from the analysis of voice. In this work we propose an algorithm to estimate speech features from running speech with the aim of characterizing the mood state in bipolar patients. This algorithm is based on an automatic segmentation of speech signals to detect voiced segments, and on a spectral matching approach to estimate pitch and pitch changes. In particular average pitch, jitter and pitch standard deviation within each voiced segment, are estimated. The performances of the algorithm are evaluated on a speech database, which includes an electroglottographic signal. A preliminary analysis on subjects affected by bipolar disorders is performed and results are discussed.
2012
Proceeding of the 34th International Conference of the IEEE Engineering in Medicine and Biology
34th Annual International Conference of IEEE Engineering in Medicine and Biology Society
San Diego, California, USA
28/08/2012-01/09/2012
VANELLO, NICOLA; Guidi A; Gentili C; Werner S; Bertschy G; VALENZA, GAETANO; LANATA', ANTONIO; SCILINGO, ENZO PASQUALE
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1192201
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