We draw on a simulationist approach to the analysis of facially displayed emotions, e.g., in the course of a face-to-face interaction between an expresser and an observer. At the heart of such perspective lies the enactment of the perceived emotion in the observer. We propose a novel probabilistic framework based on a deep latent representation of a continuous affect space, which can be exploited for both the estimation and the enactment of affective states in a multimodal space (visible facial expressions and physiological signals). The rationale behind the approach lies in the large body of evidence from affective neuroscience showing that when we observe emotional facial expressions, we react with congruent facial mimicry. Further, in more complex situations, affect understanding is likely to rely on a comprehensive representation grounding the reconstruction of the state of the body associated with the displayed emotion. We show that our approach can address such problems in a unified and principled perspective, thus avoiding ad hoc heuristics while minimizing learning efforts.

Deep construction of an affective latent space via multimodal enactment / G. Boccignone, D. Conte, V. Cuculo, A. D'Amelio, G. Grossi, R. Lanzarotti. - In: IEEE TRANSACTIONS ON COGNITIVE AND DEVELOPMENTAL SYSTEMS. - ISSN 2379-8920. - 10:4(2018 Dec), pp. 865-880. [10.1109/TCDS.2017.2788820]

Deep construction of an affective latent space via multimodal enactment

G. Boccignone;V. Cuculo;A. D'Amelio;G. Grossi;R. Lanzarotti
2018

Abstract

We draw on a simulationist approach to the analysis of facially displayed emotions, e.g., in the course of a face-to-face interaction between an expresser and an observer. At the heart of such perspective lies the enactment of the perceived emotion in the observer. We propose a novel probabilistic framework based on a deep latent representation of a continuous affect space, which can be exploited for both the estimation and the enactment of affective states in a multimodal space (visible facial expressions and physiological signals). The rationale behind the approach lies in the large body of evidence from affective neuroscience showing that when we observe emotional facial expressions, we react with congruent facial mimicry. Further, in more complex situations, affect understanding is likely to rely on a comprehensive representation grounding the reconstruction of the state of the body associated with the displayed emotion. We show that our approach can address such problems in a unified and principled perspective, thus avoiding ad hoc heuristics while minimizing learning efforts.
Emotion; Affective computing; Bayesian models; deep learning; human-agent interaction; simulation
Settore INF/01 - Informatica
Settore ING-INF/05 - Sistemi di Elaborazione delle Informazioni
Settore M-PSI/01 - Psicologia Generale
   Le espressioni facciali e l'interpretazione delle emozioni: un approccio computazionale di integrazione tra acquisizione di immagine e segnali fisiologici basato sulla shape analysis e network bayesiani
   MINISTERO DELL'ISTRUZIONE E DEL MERITO
   RBFR12VHR7_003
dic-2018
29-dic-2017
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/613248
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