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An SSVEP Based Brain Computer Interface System to Control Electric Wheelchairs

机译:基于SSVEP的脑电脑界面系统,用于控制电动轮椅

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Brain-computer interface (BCI) based systems can be used to control external devices by translating a certain set of patterns in the brain signals into actions. An example of this is a BCI controlled wheelchair, with the actions being navigating the wheelchair. In this paper, a Steady State Visual Evoked Potential (SSVEP) based BCI system that controls the operations (forward, reverse, left, and right) of an electrical wheelchair is presented. This system utilizes four LEDs with different flickering frequencies as a visual stimulation source. By providing concentration to these visual stimulation sources, the SSVEP signals are entrained in the occipital and posterior region of the brain. The acquired SSVEP signals are classified into four different frequency ranges representing each of the directions using suitable signal processing algorithms. Based on this classification, a specific control signal is derived to navigate the wheelchair in the desired direction. This system can assist individuals who suffer from neuromuscular degenerative diseases such as Amyotrophic Lateral Sclerosis (ALS), Locked-in Syndrome (LIS), etc., with the navigation of an electric wheelchair using their brain waves. Five peripheral safety sensors are mounted on the wheelchair to avoid the risk of collisions while operating the wheelchair. Once an obstacle is detected by these sensors, a control signal is sent from the Arduino microcontroller to stop the wheelchair. Three experiments were conducted on four subjects to measure the accuracy and reliability of the system. Our results show that the presented system allows the user to navigate to their intended direction with an average accuracy of 79.4%. Also, the safety mechanism incorporated results in an accuracy of 100% obstacle avoidance. Our results show that on average a user can navigate 50 feet set path in approximately five minutes.
机译:基于脑电脑接口(BCI)的系统可用于通过将大脑信号中的一组模式转换为动作来控制外部设备。这是一个BCI控制的轮椅,带有驾驶轮椅的动作。在本文中,呈现了一种基于稳态的视觉诱发电位(SSVEP),用于控制电气轮椅的操作(正向,反向,左侧和右)的BCI系统。该系统利用具有不同闪烁频率的四个LED作为视觉刺激源。通过向这些视觉刺激源提供浓度,SSVEP信号夹带在大脑的枕骨和后部区域中。获取的SSVEP信号被分类为四种不同的频率范围,表示使用合适的信号处理算法的每个方向。基于该分类,导出特定控制信号以在所需方向上导航轮椅。该系统可以帮助患有神经肌肉退行性疾病的个体,例如肌营养的外侧硬化(ALS),锁定综合征(LIS)等,使用其脑波的电动轮椅导航。五个外围安全传感器安装在轮椅上,以避免操作轮椅时碰撞的风险。一旦通过这些传感器检测到障碍物,从Arduino微控制器发送控制信号以停止轮椅。在四个受试者进行三个实验,以测量系统的准确性和可靠性。我们的结果表明,所呈现的系统允许用户导航到其预​​期方向,平均精度为79.4%。此外,掺入的安全机制导致避免100%避免的准确性。我们的结果表明,平均用户可以在大约五分钟内导航50英尺的设置路径。

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