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
- 发表年份
- 2017
- 访问权限
- 开放获取
摘要
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 (FB-CSP) combined with rLDA, both widely used EEG classifiers. Deep ConvNets reached mean accuracies of 75% +/- 9 %, rLDA 65% +/- 10% and FB-CSP + rLDA 63% +/- 6% for decoding of erroneous vs. correct trials. Visualization of the time-domain EEG features learned by the ConvNets to decode errors revealed spatiotemporal patterns that reflected differences between the two experimental paradigms. Across subjects, ConvNet decoding accuracies were significantly correlated with those obtained with rLDA, but not CSP, indicating that in the present context ConvNets behaved more 'rLDA-like' (but consistently better), while in a previous decoding study with another task but the same ConvNet architecture, it was found to behave more 'CSP-like'. Our findings thus provide further support for the assumption that deep ConvNets are a versatile addition to the existing toolbox of EEG decoding techniques, and we discuss steps how ConvNet EEG decoding performance could be further optimized.
关键词
相关论文
工业5.0中人机协作的多模态感知、互认知与具身执行综述与展望
Kai Ding, Qingyuan Mao, Yaqian Zhang 等 6 位作者
Robotics and Computer-Integrated Manufacturing · 2026
迈向以人为中心的制造:人机协作装配中不确定性下的任务规划
Yingchao You, Ze Ji, Changyun Wei
Robotics and Computer-Integrated Manufacturing · 2026
代理式人机协作:通过记忆实现上下文对齐
Jiahui Si, Wenchao Li, Xi Chen 等 7 位作者
Robotics and Computer-Integrated Manufacturing · 2026
自适应物理信息Transformer结合高斯过程残差补偿用于人机协作中的逆动力学建模
Rui Qian, Xi Zhang, Dongpeng Li 等 5 位作者
Robotics and Computer-Integrated Manufacturing · 2026