Local Binary Patterning Approach for Movement Related Potentials based Brain Computer Interface

G. Mezzina, D. Venuto
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引用次数: 5

Abstract

This paper proposes the design and the implementation of an innovative algorithm for a 2-choices synchronous Brain-Computer Interface (BCI).The proposed BCI operates on signals from eight EEG channels evenly distributed along the sensorimotor area.The acquired EEGs are then analyzed by using a symbolization method. Typically, the symbolization includes data-analysis algorithms that translate physical processes from experimental measurements into a series of discrete symbols (e.g., bit strings). For the BCI application, the chosen symbolization algorithm is the Local Binary Pattern (LBP).Since the selected LBP method uses binary operations for the whole processing chain (end-to-end), the complexity and the computing timing of the features extraction (FE) and real-time classification stages have been strongly reduced.Finally, a time-continuous Support Vector Machine (tcSVM) classifies the LBP-extracted features.The here proposed BCI algorithm has been validated on 3 subjects (aged 26±1), who underwent a stimulation protocol oriented to Movement-Related Potentials (MRPs) elicitation. The in-vivo validation showed how the system is able to reach an intention recognition accuracy of 85.61 ± 1.19 %. In addition, starting from the complete data storage, the whole implemented computing chain asks, on average, for just ~3ms to provide the classification.As a proof of concept, the tcSVM outcomes have been used to drive, via Bluetooth, a 3D printed robotic hand.
基于运动相关电位的脑机接口局部二值模式方法
本文提出了一种基于双选项同步脑机接口(BCI)的创新算法的设计与实现。所提出的脑机接口对均匀分布在感觉运动区的八个脑电信号通道进行操作。然后用符号化方法对采集到的脑电图进行分析。通常,符号化包括数据分析算法,将物理过程从实验测量转换为一系列离散符号(例如,位串)。对于BCI应用,选择的符号化算法是局部二进制模式(LBP)。由于所选择的LBP方法对整个处理链(端到端)使用二进制操作,因此大大降低了特征提取(FE)和实时分类阶段的复杂性和计算时间。最后,使用时间连续支持向量机(tcSVM)对lbp提取的特征进行分类。本文提出的脑机接口算法已在3名受试者(26±1岁)身上进行了验证,他们接受了运动相关电位(MRPs)激发的刺激方案。体内验证表明,该系统能够达到85.61±1.19%的意图识别准确率。此外,从完整的数据存储开始,整个实现的计算链平均只需要~3ms的时间来提供分类。作为概念验证,tcSVM的成果已被用于通过蓝牙驱动3D打印的机械手。
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