INVESTIGADORES
ACEVEDO Daniel German
congresos y reuniones científicas
Título:
Attribute classification for the analysis of genuineness of facial expressions
Autor/es:
GONZALO FERNANDEZ FLORIO; MARÍA ELENA BUEMI; DANIEL ACEVEDO; PABLO NEGRI
Lugar:
Curicó
Reunión:
Conferencia; The 11th International Conference on Pattern Recognition Systems; 2021
Institución organizadora:
Achirp-IAPR
Resumen:
In this work we study different artificial neural network variants to classify instances of facial expressions on video according to its genuineness. This problem is a task not trivial to solve by human beings. The main analysis compares deep feed-forward neural networks with recurrent neural networks. This particular type of network capable of extracting information from a sequence and keep it through time. In that way, a video can be classified using not only its features but also the ones from its predecessors. Since the amount of videos in the dataset is rather scarce, a new metric is proposed to make a more particularized analysis. Results suggest that certain facial features that allows distinguishing a genuine expression and a faked one are too related to the subject that performs them, which suggests that developing an universal classifier (independent of the subject) seems unfeasible. Regarding the comparison between the two types of networks, although the recurrent variants cannot outperform convnets, we can observe that they achieve similar results but with a smaller amount of training epochs. The dataset used in this paper was originated for the Real Versus Fake Expressed Emotion Challenge at the ICCV 2017.