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掩蔽经验模态分解与具有前馈和反向传播的神经网络以及掩蔽经验模态分解的比较分析,以提高可靠脑机接口的分类性能。

A comparative analysis of masking empirical mode decomposition and a neural network with feed-forward and back propagation along with masking empirical mode decomposition to improve the classification performance for a reliable brain-computer interface.

作者信息

Jaipriya D, Sriharipriya K C

机构信息

School of Electronics Engineering, Vellore Institute of Technology, Vellore, India.

出版信息

Front Comput Neurosci. 2022 Nov 4;16:1010770. doi: 10.3389/fncom.2022.1010770. eCollection 2022.

Abstract

In general, extraction and classification are used in various fields like image processing, pattern recognition, signal processing, and so on. Extracting effective characteristics from raw electroencephalogram (EEG) signals is a crucial role of the brain-computer interface for motor imagery. Recently, there has been a great deal of focus on motor imagery in the EEG signals since they encode a person's intent to do an action. Researchers have been using MI signals to assist paralyzed people and even move them on their own with certain equipment, like wheelchairs. As a result, proper decoding is an important step required for the interconnection of the brain and the computer. EEG decoding is a challenging process because of poor SNR, complexity, and other reasons. However, choosing an appropriate method to extract the features to improve the performance of motor imagery recognition is still a research hotspot. To extract the features of the EEG signal in the classification task, this paper proposes a Masking Empirical Mode Decomposition (MEMD) based Feed Forward Back Propagation Neural Network (MEMD-FFBPNN). The dataset consists of EEG signals which are first normalized using the minimax method and given as input to the MEMD to extract the features and then given to the FFBPNN to classify the tasks. The accuracy of the proposed method MEMD-FFBPNN has been measured using the confusion matrix, mean square error and which has been recorded up to 99.9%. Thus, the proposed method gives better accuracy than the other conventional methods.

摘要

一般来说,提取和分类被应用于图像处理、模式识别、信号处理等各个领域。从原始脑电图(EEG)信号中提取有效特征是脑机接口进行运动想象的关键作用。最近,EEG信号中的运动想象受到了大量关注,因为它们编码了一个人执行动作的意图。研究人员一直在使用运动想象信号来帮助瘫痪患者,甚至借助轮椅等特定设备让他们自主行动。因此,正确解码是大脑与计算机连接所需的重要一步。由于信噪比低、复杂性等原因,EEG解码是一个具有挑战性的过程。然而,选择合适的方法来提取特征以提高运动想象识别的性能仍然是一个研究热点。为了在分类任务中提取EEG信号的特征,本文提出了一种基于掩蔽经验模态分解(MEMD)的前馈反向传播神经网络(MEMD-FFBPNN)。数据集由EEG信号组成,这些信号首先使用最小-最大方法进行归一化,然后作为输入提供给MEMD以提取特征,再提供给FFBPNN进行任务分类。所提出的方法MEMD-FFBPNN的准确率已使用混淆矩阵、均方误差进行测量,记录高达99.9%。因此,所提出的方法比其他传统方法具有更高的准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/817b/9672820/b52cb0d4435d/fncom-16-1010770-g001.jpg

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