ETD

Archivio digitale delle tesi discusse presso l'Università di Pisa

Tesi etd-02132013-165117


Tipo di tesi
Tesi di dottorato di ricerca
Autore
VALENZA, GAETANO
URN
etd-02132013-165117
Titolo
Autonomic Nervous System Dynamics for Mood and Emotional-State Recognition: Wearable Systems, Modeling, and Advanced Biosignal Processing
Settore scientifico disciplinare
ING-INF/06
Corso di studi
INGEGNERIA
Relatori
tutor Prof. Scilingo, Enzo Pasquale
commissario Barbieri, Riccardo
commissario Blanchini, Franco
commissario Prof. Bicchi, Antonio
Parole chiave
  • Point Process
  • nonlinear analysis
  • Laguerre expansion
  • High Order Statistics
  • Eye gaze patterns
  • Emotion recognition
  • Electrodermal response
  • dominant Lyapunov exponent
  • Cardio-respiratory synchrogram
  • Bispectrum
  • Biomedical signal processing
  • approximate entropy
  • affective computing
  • PSYCHE platform; Autonomic nervous system monitori
  • Textile electrode
  • Trispectrum
  • Wiener-Volterra Model
Data inizio appello
11/03/2013
Consultabilità
Completa
Riassunto
This thesis aims at investigating how electrophysiological signals related to the autonomic nervous system (ANS) dynamics could be source of reliable and effective markers for mood state recognition and assessment of emotional responses. In-depth methodological and applicative studies of biosignals such as electrocardiogram, electrodermal response, and respiration activity along with information coming from the eyes (gaze points and pupil size variation) were performed. Supported by the current literature, I found that nonlinear signal processing techniques play a crucial role in understanding the underlying ANS physiology and provide important quantifiers of cardiovascular control dynamics with prognostic value in both healthy subjects and patients.
Two main applicative scenarios were identified: the former includes a group of healthy subjects who was presented with sets of images gathered from the International Affective Picture System hav- ing five levels of arousal and five levels of valence, including both a neutral reference level. The latter was constituted by bipolar patients who were followed for a period of 90 days during which psychophysical evaluations were performed. In both datasets, standard signal processing techniques as well as nonlinear measures have been taken into account to automatically and accurately recognize the elicited levels of arousal and valence and mood states, respectively. A novel probabilistic approach based on the point-process theory was also successfully applied in order to model and characterize the instantaneous ANS nonlinear dynamics in both healthy subjects and bipolar patients. According to the reported evidences on ANS complex behavior, experimental results demonstrate that an accurate characterization of the elicited affective levels and mood states is viable only when non- linear information are retained. Moreover, I demonstrate that the instantaneous ANS assessment is effective in both healthy subjects and patients.
Besides mathematics and signal processing, this thesis also contributes to pragmatic issues such as emotional and mood state mod- eling, elicitation, and noninvasive ANS monitoring. Throughout the dissertation, a critical review on the current state-of-the-art is reported leading to the description of dedicated experimental protocols, reliable mood models, and novel wearable systems able to perform ANS monitoring in a naturalistic environment.
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