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Electrooculogram-aided intelligent sensing and high-performance communication control system for massive ALS individuals

机译:电框 - 辅助智能感应和大型ALS个人的高性能通信控制系统

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Neurodegenerative disease was one of the progressive diseases that affect the brain's neurons and cause muscle dysfunction. There is a need to focus on these challenges for interfaces to communicate with others. We analyze three categories of subjects from 15 subjects between different age groups from 20 to 55 to investigate the efficiency to promote the human-computer interface using eye activities. Observed signals were estimated with root mean square for 11 tasks and classified with probabilistic neural network. In the experimental analysis, it determines that subjects belonging to young-aged group performance were appreciated and obtained the average mean classification accuracy of 94.00%, the subjects belonging to old-aged group performance were medium and obtained the average mean classification accuracy of 93.27%, and subjects belonging to amyotrophic lateral sclerosis (ALS) performance were low and obtained the average mean classification accuracy of 90.37%. The study examined that young-aged subjects' performance was marginally high compared with the other two categories of subjects. Our study concluded that first maximum performances were obtained for young-aged subjects and secondary performance was attained for old-aged subjects, and ALS subjects obtained minimum performance compared to other subjects who participated in this analysis. Finally, our study concluded that designing intelligent sensing and high-performance communication control systems for massive ALS-affected subjects was minimal. They also need more training than other categories of subjects in this experiment.
机译:神经退行性疾病是影响大脑神经元并导致肌肉功能障碍的渐进疾病之一。需要关注与他人沟通的接口的这些挑战。我们将不同年龄组之间的15个受试者分析到20到55之间的三类受试者,以调查使用眼部活动促进人机界面的效率。观察到的信号用11个任务的根均线估计,并归类于概率神经网络。在实验分析中,它决定了属于年轻年龄组性能的受试者,并获得了94.00%的平均平均分类准确性,属于旧年龄组性能的受试者是中等的,获得了93.27%的平均平均分类准确性而属于肌营养侧向硬化(ALS)性能的受试者低,并且获得了90.37%的平均平均分类精度。该研究检测到与其他两类受试者相比,年轻人受试者的表现略微高。我们的研究得出结论,在年轻年龄科目获得最大的最大表现,并且历史次级患者达到次要表现,与参加此分析的其他科目相比,ALS受试者获得了最低绩效。最后,我们的研究得出结论,为大型ALS的受试者设计智能感应和高性能通信控制系统是最小的。他们还需要更多的培训,而不是该实验中的其他类别的受试者。

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