迈向脑机接口独立组件分析的硬件实现

A. Malatesta, L. R. Quitadamo, M. Abbafati, L. Bianchi, M. Marciani, G. Cardarilli
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引用次数: 4

摘要

脑机接口(BCI)系统通过将直接从大脑获得的生理信号转换为对外部设备的指令,实现了人类用户与外部环境之间的通信路径。为了提高从信号中提取信息的可靠性,进而提高BCI系统的性能,在BCI领域中实现了许多协议,并测试了许多信号分析技术和算法。独立分量分析(ICA)是一种有用的数据分析工具,因为它允许在一些独立的源中分离信号,这些源携带有关信号本身不同分量的信息。然而,ICA在计算上是昂贵的,并且应该做一些努力,以便在分析所花费的时间方面最大化其结果。现在讨论了一种硬件实现,使ICA对典型的BCI系统的在线分析更有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moving Towards a Hardware Implementation of the Independent Component Analysis for Brain Computer Interfaces
Brain computer interface (BCI) systems implement a communication path between human users and the external environment by translating physiological signals directly acquired from the brain into commands toward external peripherals. A lot of protocols have been implemented in the BCI field and a lot of analytical techniques and algorithms on the signals have been tested to improve the reliability of the information extracted from signals and then the performances of BCI systems. Independent component analysis (ICA) revealed to be a useful tool for analyzing data as it allows the separation of the signals in some independent sources which carry information about the different components of the signals themselves. However ICA is computationally expensive and some efforts should be done in order to maximize its results in terms of time spent for the analysis. A hardware implementation is now discussed which makes the ICA more useful for the online analysis typical of BCI systems.
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