A Neurorobotic Experiment for Crossmodal Conflict Resolution in Complex Environments
Crossmodal conflict resolution is a crucial component of robot sensorimotor coupling through interaction with the environment for swift and robust behaviour also in noisy conditions. In this paper, we propose a neurorobotic experiment in which an iCub robot exhibits human-like responses in a complex crossmodal environment. To better understand how humans deal with multisensory conflicts, we conducted a behavioural study exposing 33 subjects to congruent and incongruent dynamic audio-visual cues. In contrast to previous studies using simplified stimuli, we designed a scenario with four animated avatars and observed that the magnitude and extension of the visual bias are related to the semantics embedded in the scene, i.e., visual cues that are congruent with environmental statistics (moving lips and vocalization) induce a stronger bias. We propose a deep learning model that processes stereophonic sound, facial features, and body motion to trigger a discrete response resembling the collected behavioural data. After training, we exposed the iCub to the same experimental conditions as the human subjects, showing that the robot can replicate similar responses in real time. Our interdisciplinary work provides important insights into how crossmodal conflict resolution can be modelled in robots and introduces future research directions for the efficient combination of sensory drive with internally generated knowledge and expectations.
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