Altres autors/es

Universitat Autònoma de Barcelona

University of Tartu

Institute of Physiology and Pathology of Hearing

Hasan Kalyoncu University

Universitat Oberta de Catalunya (UOC)

Data de publicació

2019-04-15T11:37:16Z

2019-04-15T11:37:16Z

2018-01-09



Resum

Humans modify their facial expressions in order to communicate their internal states and sometimes to mislead observers regarding their true emotional states. Evidence in experimental psychology shows that discriminative facial responses are short and subtle. This suggests that such behavior would be easier to distinguish when captured in high resolution at an increased frame rate. We are proposing SASE-FE, the first dataset of facial expressions that are either congruent or incongruent with underlying emotion states. We show that overall the problem of recognizing whether facial movements are expressions of authentic emotions or not can be successfully addressed by learning spatio-temporal representations of the data. For this purpose, we propose a method that aggregates features along fiducial trajectories in a deeply learnt space. Performance of the proposed model shows that on average it is easier to distinguish among genuine facial expressions of emotion than among unfelt facial expressions of emotion and that certain emotion pairs such as contempt and disgust are more difficult to distinguish than the rest. Furthermore, the proposed methodology improves state of the art results on CK+ and OULU-CASIA datasets for video emotion recognition, and achieves competitive results when classifying facial action units on BP4D datase.

Tipus de document

Article


Versió presentada

Llengua

Anglès

Publicat per

IEEE Transactions on Affective Computing

Documents relacionats

IEEE Transactions on Affective Computing, 2018

http://arxiv.org/pdf/1707.04061

Citació recomanada

Kulkarni, K., Corneanu, C., Ofodile, I., Escalera Guerrero, S., Baró Solé, X., Hyniewska, S., Allik, J. & Anbarjafari, G. (2018). Automatic recognition of facial displays of unfelt emotions. IEEE Transactions on Affective Computing. doi: 10.1109/TAFFC.2018.2874996

1949-3045

2371-9850

10.1109/TAFFC.2018.2874996

Drets

(c) Author/s & (c) Journal

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