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A BCI System Based on Motor Imagery for Assisting People with Motor Deficiencies in the Limbs

机译:基于电动机图像的BCI系统用于协助肢体电机缺陷的人

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摘要

Motor deficiencies constitute a significant problem affecting millions of people worldwide. Such people suffer from a debility in daily functioning, which may lead to decreased and incoherence in daily routines and deteriorate their quality of life (QoL). Thus, there is an essential need for assistive systems to help those people achieve their daily actions and enhance their overall QoL. This study proposes a novel brain–computer interface (BCI) system for assisting people with limb motor disabilities in performing their daily life activities by using their brain signals to control assistive devices. The extraction of useful features is vital for an efficient BCI system. Therefore, the proposed system consists of a hybrid feature set that feeds into three machine-learning (ML) classifiers to classify motor Imagery (MI) tasks. This hybrid feature selection (FS) system is practical, real-time, and an efficient BCI with low computation cost. We investigate different combinations of channels to select the combination that has the highest impact on performance. The results indicate that the highest achieved accuracies using a support vector machine (SVM) classifier are 93.46% and 86.0% for the BCI competition III–IVa dataset and the autocalibration and recurrent adaptation dataset, respectively. These datasets are used to test the performance of the proposed BCI. Also, we verify the effectiveness of the proposed BCI by comparing its performance with recent studies. We show that the proposed system is accurate and efficient. Future work can apply the proposed system to individuals with limb motor disabilities to assist them and test their capability to improve their QoL. Moreover, the forthcoming work can examine the system’s performance in controlling assistive devices such as wheelchairs or artificial limbs.
机译:电机缺陷构成了影响全球数百万人的重要问题。这些人患有日常运作中的借兵,这可能导致日常生活中的减少和不一致,恶化了他们的生活质量(QOL)。因此,辅助系统必须有必要帮助这些人实现日常行动并增强他们的整体QOL。本研究提出了一种新颖的脑电脑界面(BCI)系统,用于协助肢体运动残疾的人通过使用他们的大脑信号来控制辅助装置进行日常生活活动。有用特征的提取对于高效的BCI系统至关重要。因此,所提出的系统由一个混合特征集组成,该特征设置为三个机器学习(ML)分类器来分类电机图像(MI)任务。该混合特征选择(FS)系统实际,实时和高计算成本的高效BCI。我们调查了不同的通道组合,以选择对性能影响最高的组合。结果表明,使用支持向量机(SVM)分类器的最高精度分别为BCI竞争III-IVA数据集和自动校准和复发适应数据集的93.46%和86.0%。这些数据集用于测试所提出的BCI的性能。此外,我们通过比较其最近的研究来验证所提出的BCI的有效性。我们表明所提出的系统准确有效。未来的工作可以将建议的系统应用于具有肢体运动残疾的个人,以帮助他们并测试其能力来提高他们的QoL。此外,即将到来的工作可以检查系统在控制辅助装置(如轮椅或人造肢)中的性能。

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