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.File | Dimensione | Formato | |
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