Towards Symbiotic Human-Robot Collaboration: Human Movement Intention Recognition with an EEG

A. Buerkle, N. Lohse, P. Ferreira
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引用次数: 2

Abstract

In order to meet the trend of customers demanding more customised and complex products, human workers and robots need to collaborate in closer proximity. Working in shared environments raises safety concerns of humans getting injured by robots. Current safety systems are mostly vision based and detect movement after it has started. This work proposes the use of an electroencephalography (EEG) which measures the brainwaves in order to detect a worker’s intention to move. This is expected to provide 0.5 seconds gain for the system to react in advance of the actual movement. In this paper the details on how EEG sensors can be integrated to detect intentions and how these can be extrapolated using machine learning techniques, are presented. The ultimate vision is to deliver an early warning system to enhance existing safety systems.
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面向人机共生协作:基于脑电图的人类运动意图识别
为了满足客户对更多定制化和复杂产品的需求,人类工人和机器人需要更近距离地合作。在共享环境中工作引发了人类被机器人伤害的安全担忧。目前的安全系统大多是基于视觉的,在运动开始后才检测到。这项工作建议使用脑电图(EEG)来测量脑电波,以检测工人的移动意图。预计这将为系统在实际移动之前做出反应提供0.5秒的时间。本文详细介绍了如何将EEG传感器集成到检测意图以及如何使用机器学习技术进行外推。最终目标是提供一个早期预警系统,以加强现有的安全系统。
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