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Motor imagery based EEG features visualization for BCI applications

机译:基于电机图像的脑电图功能可用于BCI应用程序的可视化

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Over recent years, electroencephalography’s (EEG) use in the state-of-the-art brain-computer interface (BCI) technology has broadened to augment the quality of life, both with medical and non-medical applications. For medical applications, the availability of real-time data for processing, which could be used as command signals to control robotic devices, is limited to specific platforms. This paper focuses on the possibility to analyse and visualize EEG signal features using OpenViBE acquisition platform in offline mode apart from its default real-time processing capability, and the options available for processing of data in offline mode. We employed OpenViBE platform to acquire EEG signals, pre-process it and extract features for a BCI system. For testing purposes, we analysed and tried to visualize EEG data offline, by developing scenarios, using method for quantification of event-related (de)synchronization ERD/ERS patterns, as well as, built in signal processing algorithms available in OpenViBE-designer toolbox. Acquired data was based on deployment of standard Graz BCI experimental protocol, used for foot kinaesthetic motor imagery (KMI). Results clearly reflect that the platform OpenViBE is a streaming tool that encourages processing and analysis of EEG data online, contrary to analysis, or visualization of data in offline, or global mode. For offline analysis and visualization of data, other relevant platforms are discussed. In online execution of BCI, OpenViBE is a potential tool for the control of wearable lower-limb devices, robotic vehicles and rehabilitation equipment. Other applications include remote control of mechatronic devices, or driving of passenger cars by human thoughts.
机译:近年来,脑电图(EEG)在最先进的脑机接口(BCI)技术中的应用范围不断扩大,以提高医疗和非医疗应用领域的生活质量。对于医疗应用,可以用作命令信号来控制机器人设备的实时数据处理能力仅限于特定平台。本文重点介绍了使用OpenViBE采集平台在离线模式下分析和可视化脑电信号特征的可能性,以及其默认的实时处理功能,以及可用于离线模式下数据处理的选项。我们使用OpenViBE平台来获取EEG信号,对其进行预处理并为BCI系统提取特征。出于测试目的,我们通过开发场景,使用事件相关(去)同步ERD / ERS模式的量化方法以及OpenViBE-designer工具箱中内置的信号处理算法来分析和尝试离线可视化EEG数据。 。采集的数据基于标准Graz BCI实验协议的部署,该协议用于足动觉运动图像(KMI)。结果清楚地表明,OpenViBE平台是一种流媒体工具,它鼓励在线处理和分析EEG数据,这与离线或全局模式下的数据分析或可视化相反。对于离线分析和数据可视化,将讨论其他相关平台。在BCI在线执行中,OpenViBE是控制可穿戴下肢设备,机器人车辆和康复设备的潜在工具。其他应用包括机电设备的远程控制,或人为因素驾驶乘用车。

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