[eng] In this work an a ective computing approach is used to study the human-robot interaction
using a social robot to validate facial expressions in the wild. Our global goal is to evaluate that
a social robot can be used to interact in a convincing manner with human users to recognize their
potential emotions through facial expressions, contextual cues and bio-signals. In particular, this work
is focused on analyzing facial expression. A social robot is used to validate a pre-trained convolutional
neural network (CNN) which recognizes facial expressions. Facial expression recognition plays
an important role in recognizing and understanding human emotion by robots. Robots equipped
with expression recognition capabilities can also be a useful tool to get feedback from the users.
The designed experiment allows evaluating a trained neural network in facial expressions using
a social robot in a real environment. In this paper a comparison between the CNN accuracy and
human experts is performed, in addition to analyze the interaction, attention and di culty to perform
a particular expression by 29 non-expert users. In the experiment, the robot leads the users to perform
di erent facial expressions in motivating and entertaining way. At the end of the experiment, the users
are quizzed about their experience with the robot. Finally, a set of experts and the CNN classify
the expressions. The obtained results allow a rming that the use of social robot is an adequate
interaction paradigm for the evaluation on facial expression.