Department of Data Science, IoT, Cybersecurity (DIC), G H Raisoni College of Engineering, Nagpur, Maharashtra, India.
Department of Computer Science Engineering, Amity School of Engineering & Technology, Amity University, Maharashtra, India.
Sci Rep. 2024 Nov 4;14(1):26621. doi: 10.1038/s41598-024-64961-1.
Biological communication system for neurological disorder patients is similar to the Brain Computer Interface in a way that it facilitates the connection to the outside world in real time. The interdisciplinary field of Electroencephalogram based message depiction is gaining importance as it assists the paralysed person to communicate. In the proposed method a novel approach of feature extraction is done by Empirical Mode Decomposition on non- stationary & non-linear kind of EEG signal. EMD helps in the effective time frequency analysis by disintegrating the EEG signal in the form of six Intrinsic Mode Functions with help of the frequency components. In all nine features are extracted from the decomposed IMFs so as to predict the states or messages of the patient. The above computed features are then served to the Deep Neural Network to perform the classification. The performance of suggested method is studied through applying it to the acquired database generated by the designed hardware as well as also in real time message depiction. The maximum classification accuracy 97% for the acquired database & 85% in real time are obtained respectively by comparative analysis. The command messages generated from the proposed system helps the person suffering from neurological disorder to establish the communication link with the outside world in an efficient way. Thus, the proposed novel method shows better performance in real time message depiction purpose as related to other existing methods.
用于神经障碍患者的生物通讯系统在某种程度上类似于脑机接口,它实时促进与外部世界的连接。基于脑电图的信息描述的跨学科领域越来越重要,因为它可以帮助瘫痪患者进行交流。在提出的方法中,通过对非平稳和非线性类型的 EEG 信号进行经验模态分解,完成了一种新颖的特征提取方法。EMD 通过以六种固有模态函数的形式分解 EEG 信号,并借助频率分量,帮助进行有效的时频分析。总共从分解的 IMFs 中提取了九个特征,以便预测患者的状态或消息。然后将上述计算出的特征提供给深度神经网络进行分类。通过将其应用于设计的硬件生成的采集数据库以及实时消息描述,研究了所提出方法的性能。通过比较分析,分别获得了采集数据库的最大分类准确率为 97%和实时消息描述的 85%。所提出的系统生成的命令消息帮助患有神经障碍的人以有效的方式与外部世界建立通信联系。因此,与其他现有方法相比,所提出的新方法在实时消息描述方面表现出更好的性能。