基于序列扩展卡尔曼滤波的神经网络训练在单次脑电分类中的应用

A. Turnip, K. Hong, S. Ge, M. Jeong
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引用次数: 3

摘要

大脑信号的非平稳性提供了一个相当不稳定的输入,导致控制的不确定性和复杂性。适应任务的智能处理算法是可靠的BCI应用程序的先决条件。本文提出了一种新的智能处理策略,实现了有效的脑机接口,提高了分类精度和通信速率。提出了一种基于序列扩展卡尔曼滤波分析的神经网络训练方法,用于提取的脑电信号分类。与原始数据提供的比率相比,取得了统计学上显著的改善。
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Neural Networks Training Based on Sequential Extended Kalman Filtering for Single Trial EEG Classification
The nonstationary nature of the brain signals provides a rather unstable input resulting in uncertainty and complexity in the control. Intelligent processing algorithms adapted to the task are a prerequisite for reliable BCI applications. This work presents a novel intelligent processing strategy for the realization of an effective BCI which has the capability to improved classification accuracy and communication rate as well. A neural networks training based on sequential extended Kalman filtering analysis for classification of extracted EEG signal is proposed. A statistically significant improvement was achieved with respect to the rates provided by raw data.
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