Thispaperisthefirststepofanexpansiveongoinginitiativecentered on automated film analysis through an ecocritical lens. Ecocriticism, an interdis- ciplinary field, delves into environmental themes within cultural works, broaden- ing the scope of humanities’ focus on representation issues. Our objective is to pioneer a method for automated, dependable analysis of audiovisual narratives within fictional feature films, exploring the interplay between human emotions exhibited by characters and their surrounding environments. Using the acclaimed Italian crime/noir film, Dogman (2018), as a case study, we have constructed a modular pipeline integrating Facial Recognition and Emotion Detection tech- nologies to scrutinize the emotional dynamics of the film’s two main characters. Our approach facilitates a comprehensive comparison over the film’s duration, enabling human analysts to future insights into the nuanced relationship between characters’ emotional states and the environmental contexts in which they unfold. Preliminary findings indicate promising outcomes from our pipeline, laying a solid foundation for subsequent film analyses. These results not only underscore the viability of automated methods in film studies but also offer a substantive starting point for deeper explorations into the complex interconnections between human emotions and cinematic environments.

Automatic Emotion Analysis in Movies: Matteo Garrone’s Dogman as a Case Study, 2024.

Automatic Emotion Analysis in Movies: Matteo Garrone’s Dogman as a Case Study

Alessia, Forciniti;Stefano, Locati
2024-01-01

Abstract

Thispaperisthefirststepofanexpansiveongoinginitiativecentered on automated film analysis through an ecocritical lens. Ecocriticism, an interdis- ciplinary field, delves into environmental themes within cultural works, broaden- ing the scope of humanities’ focus on representation issues. Our objective is to pioneer a method for automated, dependable analysis of audiovisual narratives within fictional feature films, exploring the interplay between human emotions exhibited by characters and their surrounding environments. Using the acclaimed Italian crime/noir film, Dogman (2018), as a case study, we have constructed a modular pipeline integrating Facial Recognition and Emotion Detection tech- nologies to scrutinize the emotional dynamics of the film’s two main characters. Our approach facilitates a comprehensive comparison over the film’s duration, enabling human analysts to future insights into the nuanced relationship between characters’ emotional states and the environmental contexts in which they unfold. Preliminary findings indicate promising outcomes from our pipeline, laying a solid foundation for subsequent film analyses. These results not only underscore the viability of automated methods in film studies but also offer a substantive starting point for deeper explorations into the complex interconnections between human emotions and cinematic environments.
Inglese
2024
2024
Fred, Ana; Hadjali, Allel ; Gusikhin, Oleg; Sansone, Carlo
Deep Learning Theory and Applications, 5th International Conference, DeLTA 2024 Dijon, France, July 10–11, 2024 Proceedings, Part II
Communications in Computer and Information Science
76
94
978-3-031-66704-6
Switzerland
Cham
Springer Nature Switzerland AG
esperti anonimi
internazionale
A stampa
Settore STAT-03/B - Statistica sociale
Settore STAT-01/B - Statistica per la ricerca sperimentale e tecnologica
Settore INFO-01/A - Informatica
Settore PEMM-01/B - Cinema, fotografia, radio, televisione e media digitali
4
File in questo prodotto:
File Dimensione Formato  
03b35a42-7536-454e-aa50-83845cb74d5b copia.pdf

Non accessibile

Dimensione 4.13 MB
Formato Adobe PDF
4.13 MB Adobe PDF   Visualizza/Apri   Richiedi una copia

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10808/58845
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
social impact