基于OpenBCI和Neuromore的低成本稳态视觉诱发电位脑机接口设计

Hessa Albawardi, Aljohara Almoaibed, Noor Al Abbas, Sarah Alsayed, Tarfa Almaghlouth, Saleh I. Alzahrani
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引用次数: 0

摘要

许多病人患有神经肌肉疾病,使他们无法控制肌肉。这种运动限制使它们对其他人完全可靠。这项工作提出了一种低成本脑机接口(BCI)系统的设计,该系统通过患者的脑电图(EEG)直接控制电动轮椅。该系统的设计基于稳态视觉诱发电位(SSVEPs)。在图形界面中使用了四组闪烁刺激。在轮椅上导航时,用户将视线聚焦在图形界面上所需的方向,从而产生相应的SSVEP信号。信号从用户的大脑中获取,并使用提出的SSVEP检测算法进行处理。根据算法的输出,将命令(向前、向后、向左或向右)转换为控制轮椅的命令。对于离线分析,比较了O1和O2的位置。根据得到的结果,氧气对60%的受试者给出了最高的振幅。为了选择最佳的刺激颜色,进行了额外的实验。结果发现,绿色/黑色是最好的选择,既舒适又能发出强烈的信号。为了实时分析,使用Neuromore软件开发用于控制轮椅原型的检测算法。
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Design of Low-Cost Steady State Visually Evoked Potential-Based Brain Computer Interface Using OpenBCI and Neuromore
Many patients suffer from neuromuscular diseases that prevent them from controlling their muscles. This motion limitation makes them fully reliable on others. This work presents a design of a low-cost brain-computer interface (BCI) system with which an electrical wheelchair is controlled directly by the patient's electroencephalogram (EEG). The design of the system is based on steady state visually evoked potentials (SSVEPs). Four groups of flickering stimuli are used in a graphical interface. To navigate the wheelchair, the user focusses his sight in the desired direction on the graphical interface to produce the corresponding SSVEP signal. The signal is acquired from the user's brain and processed using a proposed SSVEP detection algorithm. Based on the output of the algorithm, a command (forward, backward, left, or right) is translated to control the wheelchair. For the offline analysis, a comparison between O1 and O2 positions was done. Based on the obtained results, O2 gave the highest amplitude for 60% of the subjects. An additional experiment was done to choose the optimal stimulus colour. It was found that green/black is the best option that was both comfortable and provided a strong signal. For the real-time analysis, Neuromore software was used to develop the detection algorithm used for controlling the wheelchair prototype.
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