Adaptive robot body learning and estimation through predictive coding
Pablo Lanillos, Gordon Cheng

TL;DR
This paper presents a predictive coding-based model enabling multisensory robots to learn and estimate their body configuration adaptively, improving self-calibration and safe interaction despite noisy sensors and perturbations.
Contribution
It introduces a novel computational perceptual model using Gaussian process regression for adaptive robot body learning and estimation with multisensory integration.
Findings
Model improves body estimation accuracy with multiple sensory modalities.
System adapts to sensory perturbations and noise, maintaining plausible body configuration.
Disabling sensors reduces estimation reliability, confirming model robustness.
Abstract
The predictive functions that permit humans to infer their body state by sensorimotor integration are critical to perform safe interaction in complex environments. These functions are adaptive and robust to non-linear actuators and noisy sensory information. This paper introduces a computational perceptual model based on predictive processing that enables any multisensory robot to learn, infer and update its body configuration when using arbitrary sensors with Gaussian additive noise. The proposed method integrates different sources of information (tactile, visual and proprioceptive) to drive the robot belief to its current body configuration. The motivation is to enable robots with the embodied perception needed for self-calibration and safe physical human-robot interaction. We formulate body learning as obtaining the forward model that encodes the sensor values depending on the body…
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