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Enhanced Error Decoding from Error-Related Potentials using Convolutional Neural Networks

机译:使用卷积神经网络从错误相关电位中增强错误解码

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Error-related potentials are considered an important neuro-correlate for monitoring human intentionality in decision-making, human-human, or human-machine interaction scenarios. Multiple methods have been proposed in order to improve the recognition of human intentions. Moreover, current brain-computer interfaces are limited in the identification of human errors by manual tuning of parameters (e.g., feature/channel selection), thus selecting fronto-central channels as discriminative features within-subject. In this paper, we propose the inclusion of error-related potential activity as a generalized two-dimensional feature set and a Convolutional Neural Network for classification of EEG-based human error detection. We evaluate this pipeline using the BNCI2020 - Monitoring Error-Related Potential dataset obtaining a maximum error detection accuracy of 79.8% in a within-session 10-fold cross-validation modality, and outperforming current state of the art.
机译:与错误相关的电位被认为是在决策,人与人或人机交互场景中监视人的意图的重要神经相关因素。为了改善对人类意图的识别,已经提出了多种方法。此外,当前的脑计算机接口通过手动调整参数(例如,特征/通道选择),从而在识别人为错误方面受到限制,从而选择额中央通道作为受试者内的判别性特征。在本文中,我们建议将错误相关的潜在活动包括为广义的二维特征集和卷积神经网络,用于基于EEG的人为错误检测的分类。我们使用BNCI2020-监控与错误相关的潜在数据集来评估此管道,在会话内10倍交叉验证方式中,最大错误检测精度为79.8%,且性能优于当前水平。

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