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Thought-controlled robots - Systems, studies and future challenges

机译:受思想控制的机器人-系统,研究和未来挑战

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Brain-machine interfaces open a direct channel between a brain and a robot. This channel is commonly used to provide direct and active input to the robot, resulting in a tele-operation system. We argue in favor of a more passive brainmachine interface as a means for human-robot interaction. There, the brain signals of the human interaction partner are constantly monitored and decoded to detect particular states that correlate with events in the robot's behavior. Such a state can be surprise due to a strange or erroneous robot action. We review three studies that we conducted with our own EEG-based brain-robot interface framework. The interface is active, that is, we directly control humanoid robots in different application scenarios in a semi-autonomous manner. Our results show that automated and unconscious components in the EEG are the most robust and acceptable for the user. These are exactly the components that are useful for a passive interface. Finally, we present a pilot study where we extract correlates of human surprise from an interaction with a real humanoid robot. We show that, currently in offline analysis, we are able to extract similar components used in the structured, stimulus based active interfaces. We pinpoint the issues that need to be solved, such as a more reliable real-time decoding of brain signals from real-world interaction situations.
机译:脑机接口在大脑和机器人之间打开直接通道。该频道通常用于为机器人提供直接和主动输入,从而导致远程操作系统。我们争辩有利于更具被动的脑卒中界面作为人体机器人相互作用的手段。在那里,人类交互伙伴的大脑信号不断监测和解码,以检测与机器人行为中的事件相关的特定状态。由于奇怪或错误的机器人动作,这种状态可能是惊喜。我们审查了三项研究,我们用我们自己的EEG的大脑机器人接口框架进行。界面处于活动状态,即我们以半自动方式直接控制不同应用方案中的人形机器人。我们的结果表明,EEG中的自动化和无意识组件是用户最强大和最强大的。这些是对被动界面有用的组件。最后,我们提出了一项试点研究,在那里我们从与真正的人形机器人的互动中提取人类惊喜的相关性。我们展示目前在离线分析中,我们能够提取基于刺激的有源接口中使用的类似组件。我们确定需要解决的问题,例如来自现实世界互动情况的更可靠的实时解码大脑信号。

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