Brain-inspired bodily self-perception model for robot rubber hand
illusion
- URL: http://arxiv.org/abs/2303.12259v3
- Date: Thu, 27 Apr 2023 01:54:53 GMT
- Title: Brain-inspired bodily self-perception model for robot rubber hand
illusion
- Authors: Yuxuan Zhao, Enmeng Lu, Yi Zeng
- Abstract summary: We propose a Brain-inspired bodily self-perception model, by which perceptions of bodily self can be autonomously constructed without supervision signals.
We validate our model with six rubber hand illusion experiments and a disability experiment on platforms including a iCub humanoid robot and simulated environments.
- Score: 11.686402949452546
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: At the core of bodily self-consciousness is the perception of the ownership
of one's body. Recent efforts to gain a deeper understanding of the mechanisms
behind the brain's encoding of the self-body have led to various attempts to
develop a unified theoretical framework to explain related behavioral and
neurophysiological phenomena. A central question to be explained is how body
illusions such as the rubber hand illusion actually occur. Despite the
conceptual descriptions of the mechanisms of bodily self-consciousness and the
possible relevant brain areas, the existing theoretical models still lack an
explanation of the computational mechanisms by which the brain encodes the
perception of one's body and how our subjectively perceived body illusions can
be generated by neural networks. Here we integrate the biological findings of
bodily self-consciousness to propose a Brain-inspired bodily self-perception
model, by which perceptions of bodily self can be autonomously constructed
without any supervision signals. We successfully validated our computational
model with six rubber hand illusion experiments and a disability experiment on
platforms including a iCub humanoid robot and simulated environments. The
experimental results show that our model can not only well replicate the
behavioral and neural data of monkeys in biological experiments, but also
reasonably explain the causes and results of the rubber hand illusion from the
neuronal level due to advantages in biological interpretability, thus
contributing to the revealing of the computational and neural mechanisms
underlying the occurrence of the rubber hand illusion.
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