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Estimation of Visual Evoked Potentials using a Signal Subspace Approach

机译:使用信号子空间方法估计视觉诱发电位

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Extraction of visual evoked potentials (VEPs) from the human brain is generally very difficult due to its poor signal-to-noise ratio (SNR) property. A signal subspace technique is presented to estimate VEPs hidden inside highly colored electro-encephalogram (EEG) noise. This method is borrowed and modified from signal subspace techniques originally used for enhancing speech corrupted by colored noise. The signal subspace is estimated by applying eigenvalue decomposition on the approximated signal covariance matrix. The signal subspace-based algorithm is able to satisfactorily extract the P100, P200 and P300 peak latencies from artificially generated noisy VEPs. The simulation results show that the estimator maintains an average success rate of 87% with an average percentage error of less than 9%, when subjected to SNR from 0 dB to -10 dB.
机译:由于其信噪比差(SNR)性能差,从人脑中提取来自人脑的视觉诱发电位(VEPS)通常很困难。提出了信号子空间技术以估计隐藏在高彩色电脑(EEG)噪声内的VEPS。从最初用于增强彩色噪声损坏的言语的信号子空间技术借用并修改该方法。通过在近似信号协方差矩阵上应用特征值分解来估计信号子空间。基于信号子空间的算法能够令人满意地从人工产生的嘈杂VEPS中提取P100,P200和P300峰值延迟。仿真结果表明,估计器维持87%的平均成功率,平均百分比误差小于9%,当受到0 dB至-10 dB时的SNR。

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