The signature of robot action success in EEG signals of a human observer: Decoding and visualization using deep convolutional neural networks
Joos Behncke, Robin Tibor Schirrmeister, Wolfram Burgard, Tonio, Ball

TL;DR
This study demonstrates that deep convolutional neural networks significantly improve the accuracy of decoding robot errors from EEG signals of human observers during interaction tasks, surpassing traditional methods.
Contribution
The paper introduces a novel deep ConvNet framework that enhances EEG-based decoding of robot errors, providing better accuracy and interpretability compared to existing classifiers.
Findings
Deep ConvNets achieved 75% accuracy in error detection.
ConvNets outperformed rLDA and FB-CSP + rLDA classifiers.
Visualization revealed meaningful spatiotemporal EEG patterns.
Abstract
The importance of robotic assistive devices grows in our work and everyday life. Cooperative scenarios involving both robots and humans require safe human-robot interaction. One important aspect here is the management of robot errors, including fast and accurate online robot-error detection and correction. Analysis of brain signals from a human interacting with a robot may help identifying robot errors, but accuracies of such analyses have still substantial space for improvement. In this paper we evaluate whether a novel framework based on deep convolutional neural networks (deep ConvNets) could improve the accuracy of decoding robot errors from the EEG of a human observer, both during an object grasping and a pouring task. We show that deep ConvNets reached significantly higher accuracies than both regularized Linear Discriminant Analysis (rLDA) and filter bank common spatial patterns…
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