In recent years, applications like Apple's Siri or Microsoft's Cortana have created the illusion that one can actually "chat" with a machine. However, a perfectly natural human-machine interaction is far from real as none of these tools can empathize. This issue has raised an increasing interest in speech emotion recognition systems, as the possibility to detect the emotional state of the speaker. This possibility seems relevant to a broad number of domains, ranging from man-machine interfaces to those of diagnostics. With this in mind, in the present work, we explored the possibility of applying a precision approach to the development of a statistical learning algorithm aimed at classifying samples of speech produced by children with developmental disorders(DD) and typically developing(TD) children. Under the assumption that acoustic features of vocal production could not be efficiently used as a direct marker of DD, we propose to apply the Emotional Modulation function(EMF) concept, rather than running analyses on acoustic features per se to identify the different classes. The novel paradigm was applied to the French Child Pathological & Emotional Speech Database obtaining a final accuracy of 0.79, with maximum performance reached in recognizing language impairment (0.92) and autism disorder (0.82).

Mencattini, A., Mosciano, F., Comes, M.c., Di Gregorio, T., Raguso, G., Daprati, E., et al. (2018). An emotional modulation model as signature for the identification of children developmental disorders. SCIENTIFIC REPORTS, 8(1), 14487 [10.1038/s41598-018-32454-7].

An emotional modulation model as signature for the identification of children developmental disorders

Mencattini A.;Mosciano F.;Daprati E.;Di Natale C.;Martinelli E.
2018-01-01

Abstract

In recent years, applications like Apple's Siri or Microsoft's Cortana have created the illusion that one can actually "chat" with a machine. However, a perfectly natural human-machine interaction is far from real as none of these tools can empathize. This issue has raised an increasing interest in speech emotion recognition systems, as the possibility to detect the emotional state of the speaker. This possibility seems relevant to a broad number of domains, ranging from man-machine interfaces to those of diagnostics. With this in mind, in the present work, we explored the possibility of applying a precision approach to the development of a statistical learning algorithm aimed at classifying samples of speech produced by children with developmental disorders(DD) and typically developing(TD) children. Under the assumption that acoustic features of vocal production could not be efficiently used as a direct marker of DD, we propose to apply the Emotional Modulation function(EMF) concept, rather than running analyses on acoustic features per se to identify the different classes. The novel paradigm was applied to the French Child Pathological & Emotional Speech Database obtaining a final accuracy of 0.79, with maximum performance reached in recognizing language impairment (0.92) and autism disorder (0.82).
2018
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore BIO/09 - FISIOLOGIA
Settore ING-INF/01 - ELETTRONICA
Settore M-PSI/02 - PSICOBIOLOGIA E PSICOLOGIA FISIOLOGICA
English
Mencattini, A., Mosciano, F., Comes, M.c., Di Gregorio, T., Raguso, G., Daprati, E., et al. (2018). An emotional modulation model as signature for the identification of children developmental disorders. SCIENTIFIC REPORTS, 8(1), 14487 [10.1038/s41598-018-32454-7].
Mencattini, A; Mosciano, F; Comes, Mc; Di Gregorio, T; Raguso, G; Daprati, E; Ringeval, F; Schuller, B; Di Natale, C; Martinelli, E
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/206953
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