Grasp-and-Lift Detection from EEG Signal Using Convolutional Neural Network

Md. Kamrul Hasan, Sifat Redwan Wahid, Faria Rahman, Shanjida Khan Maliha, Sauda Binte Rahman
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引用次数: 2

Abstract

People undergoing neuromuscular dysfunctions and amputated limbs require automatic prosthetic appliances. In developing such prostheses, the precise detection of brain motor actions is imperative for the Grasp-and-Lift (GAL) tasks. Because of the low-cost and non-invasive essence of Electroencephalogra-phy (EEG), it is widely preferred for detecting motor actions while controlling prosthetic tools. This article has automated the hand movement activity viz GAL detection method from the 32-channel EEG signals. The proposed pipeline essentially combines preprocessing and end-to-end detection steps, eliminating the requirement of hand-crafted feature engineering. Preprocessing action consists of raw signal denoising, using either Discrete Wavelet Transform (DWT) or highpass or bandpass filtering and data standardization. The detection step consists of Convolutional Neural Network (CNN)- or Long Short Term Memory (LSTM)-based model. All the investigations utilize the publicly available WAY-EEG-GAL dataset, having six different GAL events. The best experiment reveals that the proposed framework achieves an average area under the ROC curve of 0.944, employing the DWT-based denoising filter, data standardization, and CNN-based detection model. The obtained outcome designates an excellent achievement of the introduced method in detecting GAL events from the EEG signals, turning it applicable to prosthetic appliances, brain-computer interfaces, robotic arms, etc.
基于卷积神经网络的脑电信号抓举检测
患有神经肌肉功能障碍和截肢的人需要自动假肢器具。在开发这种假肢的过程中,对大脑运动动作的精确检测对于抓取和抬起(GAL)任务是必不可少的。由于脑电图(EEG)的低成本和非侵入性的本质,它被广泛用于检测运动,同时控制假肢工具。本文提出了从32路脑电信号中自动检测手部运动活动的方法。提出的管道本质上结合了预处理和端到端检测步骤,消除了手工制作特征工程的要求。预处理动作包括原始信号去噪,使用离散小波变换(DWT)或高通或带通滤波和数据标准化。检测步骤包括基于卷积神经网络(CNN)或基于长短期记忆(LSTM)的模型。所有的调查都利用公开可用的WAY-EEG-GAL数据集,有六个不同的GAL事件。最佳实验表明,采用基于dwt的去噪滤波器、数据标准化和基于cnn的检测模型,所提出的框架在ROC曲线下的平均面积为0.944。所获得的结果表明,所介绍的方法在从脑电图信号中检测GAL事件方面取得了优异的成就,使其适用于假肢器具,脑机接口,机械臂等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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