The apparent difficulty in assessing emotions elicited by movies and the undeniable high variability in subjects emotional responses to filmic content have been recently tackled by exploring film connotative properties: the set of shooting and editing conventions that help in transmitting meaning to the audience. Connotation provides an intermediate representation which exploits the objectivity of audiovisual descriptors to predict the subjective emotional reaction of single users. This is done without the need of registering users physiological signals neither by employing other people highly variable emotional rates, but just relying on the inter-subjectivity of connotative concepts and on the knowledge of users reactions to similar stimuli. This work extends previous by extracting audiovisual and film grammar descriptors and, driven by users rates on connotative properties, creates a shared framework where movie scenes are placed, compared and recommended according to connotation. We evaluate the potential of the proposed system by asking users to assess the ability of connotation in suggesting filmic content able to target their affective requests.

Affective Recommendation of Movies Based on Selected Connotative Features

CANINI, LUCA;BENINI, Sergio;LEONARDI, Riccardo
2013-01-01

Abstract

The apparent difficulty in assessing emotions elicited by movies and the undeniable high variability in subjects emotional responses to filmic content have been recently tackled by exploring film connotative properties: the set of shooting and editing conventions that help in transmitting meaning to the audience. Connotation provides an intermediate representation which exploits the objectivity of audiovisual descriptors to predict the subjective emotional reaction of single users. This is done without the need of registering users physiological signals neither by employing other people highly variable emotional rates, but just relying on the inter-subjectivity of connotative concepts and on the knowledge of users reactions to similar stimuli. This work extends previous by extracting audiovisual and film grammar descriptors and, driven by users rates on connotative properties, creates a shared framework where movie scenes are placed, compared and recommended according to connotation. We evaluate the potential of the proposed system by asking users to assess the ability of connotation in suggesting filmic content able to target their affective requests.
2013
2012
Ateneo di appartenenza
PE6_11 Machine learning, statistical data processing and applications using signal processing (eg. speech, image, video)
PE6_8 Computer graphics, computer vision, multi media, computer games
Esperti anonimi
Inglese
Internazionale
STAMPA
TCSVT-23
4
636
647
12
Published on-line Aug. 2012; published on paper Apr. 2013
Affective recommendation; Video analysis
http://ieeexplore.ieee.org/stamp/stamp.jsp?arnumber=6259846
no
3
info:eu-repo/semantics/article
262
Canini, Luca; Benini, Sergio; Leonardi, Riccardo
1 Contributo su Rivista::1.1 Articolo in rivista
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11379/164834
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