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Author Notes:

Rony Paz, Email: rony.paz@weizmann.ac.il ; Katalin Gothard, Email: kgothard@email.arizona.edu ; Raviv Pryluk, Email: ravivpryluk@gmail.com

A.M., K.G., R. Paz, and R. Pryluk designed research; A.M. performed research; L.A.P. contributed unpublished data/analytic tools; A.M. and R. Pryluk analyzed data; A.M., K.G., R. Paz, and R. Pryluk wrote the paper.

We thank Dr. Daniel Harari for comments on computer vision and machine-learning techniques, and Sarit Velnchik for tagging the facial expression videos.

Subjects:

Automatic Recognition of Macaque Facial Expressions for Detection of Affective States

Journal Title:

eNeuro

Volume:

Volume 8, Number 6

Publisher:

Type of Work:

Article | Final Publisher PDF

Abstract:

Internal affective states produce external manifestations such as facial expressions. In humans, the Facial Action Coding System (FACS) is widely used to objectively quantify the elemental facial action units (AUs) that build complex facial expressions. A similar system has been developed for macaque monkeys—the Macaque FACS (MaqFACS); yet, unlike the human counterpart, which is already partially replaced by automatic algorithms, this system still requires labor-intensive coding. Here, we developed and implemented the first prototype for automatic MaqFACS coding. We applied the approach to the analysis of behavioral and neural data recorded from freely interacting macaque monkeys. The method achieved high performance in the recognition of six dominant AUs, generalizing between conspecific individuals (Macaca mulatta) and even between species (Macaca fascicularis). The study lays the foundation for fully automated detection of facial expressions in animals, which is crucial for investigating the neural substrates of social and affective states.

Copyright information:

© 2021 Morozov et al.

This is an Open Access work distributed under the terms of the Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/rdf).
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