The Brain-Computer Interface system is a profoundly developing area of experimentation for Motor activities which plays vital role in decoding cognitive activities. Classification of Cognitive-Motor Imagery activities from EEG signals is a critical task. Hence proposed a unique algorithm for classifying left/right-hand movements by utilizing Multi-layer Perceptron Neural Network. Handcrafted statistical Time domain and Power spectral density frequency domain features were extracted and obtained a combined accuracy of 96.02%. Results were compared with the deep learning framework. In addition to accuracy, Precision, F1-Score, and recall was considered as the performance metrics. The intervention of unwanted signals contaminates the EEG signals which influence the performance of the algorithm. Therefore, a novel approach was approached to remove the artifacts using Independent Components Analysis which boosted the performance. Following the selection of appropriate feature vectors that provided acceptable accuracy. The same method was used on all nine subjects. As a result, intra-subject accuracy was obtained for 9 subjects 94.72%. The results show that the proposed approach would be useful to classify the upper limb movements accurately.
翻译:大脑-计算机界面系统是机动车活动试验的一个深入发展的领域,在解码认知活动方面发挥着关键作用。从 EEG 信号对认知-移动图像活动进行分类是一项关键任务。因此,建议使用一种独特的算法,利用多层天体神经网络对左/右运动进行分类。手工制作的统计时代域和电光谱密度频域特性被提取出来,并获得了96.02 % 的组合精确度。结果与深层学习框架进行了比较。除了准确性外,精密性、F1-Score和回调被认为是性能衡量标准。不想要的信号的干预污染了影响算法性运行的 EEG信号。因此,采用了一种新颖的方法来利用独立构件分析来清除那些能够提高性能的物品。在选择了适当的特性矢量后,提供了可接受的准确性。所有9个主题都采用了同样的方法。结果,9个主题获得了内部精确度94.72%。结果表明,拟议的方法将有助于准确分类上肢运动。