虚拟拾放实验中的错误相关电位:实现真实世界的共享控制。

Viktorija Dimova-Edeleva, Oscar Soto Rivera, Riddhiman Laha, Luis F C Figueredo, Melissa Zavaglia, Sami Haddadin
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引用次数: 0

摘要

在人机协作环境中,机器人可以由用户直接控制,也可以通过检测用户意图的脑机接口控制,还可以作为自主代理。随着这种交互的复杂性增加,冲突也就不可避免。目标冲突可能来自不同方面,例如,界面错误--与误解人类意图有关--或自主系统在处理任务和人类期望方面的错误。这种冲突会在人脑中唤起不同的自发反应,可用于调节内在任务参数和改善系统对错误的反应,从而提高透明度、性能和安全性。为了研究检测界面和代理错误的可能性,我们设计了一个虚拟拾放任务,由人类和机器人依次负责,并记录了六名参与者的脑电图(EEG)活动。在虚拟环境中,机器人通过电脑键盘接收参与者的指令,或者作为自主代理移动。在这两种情况下,人为错误都被定义为发生在 20% - 25% 的试验中。我们发现界面错误和代理错误的反应存在差异。从脑电图数据来看,51.62%±9.99%(偶然性水平 38.21%)的拾取动作和 46.84%±6.62%(偶然性水平 36.99%)的放置动作的正确试验、界面错误和代理错误都是通过伪同步方式真实预测到的。我们的研究表明,在人机协作环境中,可以通过意图检测和自主模式提高系统的未来性能。具体的例子可以是替代和恢复运动功能的神经接口。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Error-related Potentials in a Virtual Pick-and-Place Experiment: Toward Real-world Shared-control.

In Human-Robot Collaboration setting a robot may be controlled by a user directly or through a Brain-Computer Interface that detects user intention, and it may act as an autonomous agent. As such interaction increases in complexity, conflicts become inevitable. Goal conflicts can arise from different sources, for instance, interface mistakes - related to misinterpretation of human's intention - or errors of the autonomous system to address task and human's expectations. Such conflicts evoke different spontaneous responses in the human's brain, which could be used to regulate intrinsic task parameters and to improve system response to errors - leading to improved transparency, performance, and safety. To study the possibility of detecting interface and agent errors, we designed a virtual pick and place task with sequential human and robot responsibility and recorded the electroencephalography (EEG) activity of six participants. In the virtual environment, the robot received a command from the participants through a computer keyboard or it moved as autonomous agent. In both cases, artificial errors were defined to occur in 20% - 25% of the trials. We found differences in the responses to interface and agent errors. From the EEG data, correct trials, interface errors, and agent errors were truly predicted for 51.62% ± 9.99% (chance level 38.21%) of the pick movements and 46.84%±6.62% (chance level 36.99%) for the place movements in a pseudo-asynchronous fashion. Our study suggests that in a human-robot collaboration setting one may improve the future performance of a system with intention detection and autonomous modes. Specific examples could be Neural Interfaces that replace and restore motor functions.

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