The mirror test is a well-known task in Robotics. The existing strategies are based on kinesthetic-visual matching techniques and manipulate perceptual and motion data. The proposed work attempts to demonstrate that it is possible to implement a robust robotic self-recognition method by the inner speech, i.e. the self-dialogue that enables reasoning on symbolic information. The robot self-talks and conceptually reasons on the symbolic forms of signals, and infers if the robot it sees in the mirror is itself or not. The idea is supported by the existing literature in psychology, where the importance of inner speech in self-reflection and self-concept emergence for solving the mirror test was empirically demonstrated.

Arianna Pipitone, Antonio Chella (2021). Robot passes the mirror test by inner speech. ROBOTICS AND AUTONOMOUS SYSTEMS, 144 [10.1016/j.robot.2021.103838].

Robot passes the mirror test by inner speech

Arianna Pipitone
Primo
;
Antonio Chella
Secondo
2021-10-01

Abstract

The mirror test is a well-known task in Robotics. The existing strategies are based on kinesthetic-visual matching techniques and manipulate perceptual and motion data. The proposed work attempts to demonstrate that it is possible to implement a robust robotic self-recognition method by the inner speech, i.e. the self-dialogue that enables reasoning on symbolic information. The robot self-talks and conceptually reasons on the symbolic forms of signals, and infers if the robot it sees in the mirror is itself or not. The idea is supported by the existing literature in psychology, where the importance of inner speech in self-reflection and self-concept emergence for solving the mirror test was empirically demonstrated.
ott-2021
Arianna Pipitone, Antonio Chella (2021). Robot passes the mirror test by inner speech. ROBOTICS AND AUTONOMOUS SYSTEMS, 144 [10.1016/j.robot.2021.103838].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/515982
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