We propose a novel dataset for studying and modeling facial expression intensity. Facial expression intensity recognition is a rarely discussed challenge, likely stemming from a lack of suitable datasets. Our dataset has been created by extracting facial expressions from actors across twelve fiction films, followed by crowd-sourced online annotation of the expression intensity and variability levels. It consists of over 400 automatically extracted video segments ranging from 3 to 5 seconds, as well as annotations and facial landmarks. We also present preliminary statistics derived from this dataset.

Towards the dataset for analysis and recognition of facial expressions intensity / Tiuleneva, Marina; Castano, Emanuele; Niewiadomski, Radoslaw. - (2024), pp. 1-3. (Intervento presentato al convegno 2024 International Conference on Advanced Visual Interfaces, AVI 2024 tenutosi a Arenzano, Genova nel 3-7 June 2024) [10.1145/3656650.3656711].

Towards the dataset for analysis and recognition of facial expressions intensity

Castano, Emanuele;
2024

Abstract

We propose a novel dataset for studying and modeling facial expression intensity. Facial expression intensity recognition is a rarely discussed challenge, likely stemming from a lack of suitable datasets. Our dataset has been created by extracting facial expressions from actors across twelve fiction films, followed by crowd-sourced online annotation of the expression intensity and variability levels. It consists of over 400 automatically extracted video segments ranging from 3 to 5 seconds, as well as annotations and facial landmarks. We also present preliminary statistics derived from this dataset.
2024
Proceedings of the 2024 International Conference on Advanced Visual Interfaces
2024 International Conference on Advanced Visual Interfaces, AVI 2024
Arenzano, Genova
3-7 June 2024
Tiuleneva, Marina; Castano, Emanuele; Niewiadomski, Radoslaw
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1419153
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