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Detection of Error-Related Potentials during the Robot Navigation Task by Humans

机译:人类在机器人导航任务中与错误相关的电位的检测

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We have developed a system in which humans and autonomous robots can collaborate with each other. In the system, robots often exhibit behaviors not intended by the humans. To avoid this situation, it is necessary to convey the humans’ will to the robots. To do this, we have focused on electroencephalogram (EEG) error-related Potential (ErrP), using which we can detect the ErrP when a person observes an error by a robot. In our previous study, we recorded the ErrPs from subjects in a maze task when a robot moved in directions that the subjects did not intend. However, the mean epoch number of the ErrP per subject was small. It is necessary to collect a large number of data using a deep neural network. Generally, medical data and physiological data recorded from people are small. Few Shot Learning is necessary for a small number of data. Thus, Siamese neural networks have been proposed. In this study, we combined the Siamese deep neural network with a support vector machine to discriminate between EEG data with an error (ErrP) and that without an error. Consequently, we could obtain >70% of the maximum classification accuracy among subjects and 0.60 ± 0.22 of the area under curve.
机译:我们已经开发了一个系统,在该系统中,人与自动机器人可以相互协作。在系统中,机器人经常表现出人类不希望的行为。为了避免这种情况,有必要将人类的意愿传达给机器人。为此,我们专注于脑电图(EEG)错误相关电位(ErrP),利用该电位,我们可以在人观察到机器人的错误时检测到ErrP。在我们先前的研究中,当机器人朝着受试者不想要的方向移动时,我们在迷宫任务中记录了受试者的ErrP。但是,每个受试者的ErrP的平均时期数很小。有必要使用深度神经网络来收集大量数据。通常,从人记录的医学数据和生理数据很小。对于少量数据,很少有镜头学习是必需的。因此,提出了暹罗神经网络。在这项研究中,我们将暹罗深度神经网络与支持向量机相结合,以区分有错误(ErrP)和无错误的EEG数据。因此,我们可以获得> 70%的最大分类准确率,以及0.60±0.22的曲线下面积。

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