基于脑机接口的稳态视觉诱发电位分类器优化研究

R. L. Kæseler, L. Struijk, M. Jochumsen
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引用次数: 1

摘要

虽然辅助机器人设备可以改善四肢瘫痪患者的生活质量,但很难提供一个可以充分利用的高性能接口,几乎没有运动功能。虽然脑机接口(BCI)可以用于很少或没有运动功能,但它通常具有较低的性能。稳态视觉诱发电位(SSVEP)为脑机接口提供了一些性能最好的信号,但很少用于在线异步控制,因为在线异步控制不仅精度重要,而且计算成本也很高。本研究研究并比较了三种分类器:众所周知的高性能任务相关分量分析(TRCA)、基于刺激锁定间迹相关(SLIC)算法的计算效率高的时空波束形成器(STBF)和我们提出的结合两者的新算法:SLIC-TRCA。结果表明,与TRCA ${(88.25\pm 14.58\%)}$相比,SLIC-TRCA获得了更高的精度${(95.00\pm 5.36\%}$,分类窗口为15),与STBF ${(91.00\pm 11.02\%)}$相似,而计算成本却低得多(比TRCA快519%,比STBF快144%)。因此,我们相信该算法具有令人兴奋的潜力,因为它将在不需要高性能CPU的情况下实现高分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing steady-state visual evoked potential classifiers for high performance and low computational costs in brain-computer interfacing
While assistive robotic devices can improve the quality of life for individuals with tetraplegia, it is difficult to provide a high-performing interface that can be fully utilized, with little to no motor functionality. While a brain-computer interface (BCI) can be used with little to no motor functionality, it typically has a low performance. Steady-state visually evoked potentials (SSVEP) provide some of the best performing signals for a BCI, but are rarely investigated for online asynchronous control where not only accuracy is important, but also the computational costs. This study investigates and compares three classifiers: the well-known and high-performing task-related component analysis (TRCA), the computational efficient Spatiotemporal beamformer (STBF) build on the stimulus-locked inter-trace correlation (SLIC) algorithm and our proposed novel algorithm which combines the two: the SLIC-TRCA. Results show the SLIC-TRCA achieving higher accuracies ${(95.00\pm 5.36\%}$ with a 1s classification window) compared to the TRCA ${(88.25\pm 14.58\%)}$ and similar compared to the STBF ${(91.00\pm 11.02\%)}$ while having a much lower computational cost (519% faster than the TRCA and 144% faster than the STBF). We, therefore, believe this algorithm has an exciting potential as it will allow a high classification accuracy without requiring a high-performing CPU.
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