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Single-Trial Sparse Representation-Based Approach for VEP Extraction

机译:基于单试的稀疏表示的VEP提取方法

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摘要

Sparse representation is a powerful tool in signal denoising, and visual evoked potentials (VEPs) have been proven to have strong sparsity over an appropriate dictionary. Inspired by this idea, we present in this paper a novel sparse representation-based approach to solving the VEP extraction problem. The extraction process is performed in three stages. First, instead of using the mixed signals containing the electroencephalogram (EEG) and VEPs, we utilise an EEG from a previous trial, which did not contain VEPs, to identify the parameters of the EEG autoregressive (AR) model. Second, instead of the moving average (MA) model, sparse representation is used to model the VEPs in the autoregressive-moving average (ARMA) model. Finally, we calculate the sparse coefficients and derive VEPs by using the AR model. Next, we tested the performance of the proposed algorithm with synthetic and real data, after which we compared the results with that of an AR model with exogenous input modelling and a mixed overcomplete dictionary-based sparse component decomposition method. Utilising the synthetic data, the algorithms are then employed to estimate the latencies of P100 of the VEPs corrupted by added simulated EEG at different signal-to-noise ratio (SNR) values. The validations demonstrate that our method can well preserve the details of the VEPs for latency estimation, even in low SNR environments.
机译:稀疏表示是信号去噪的强大工具,并且被证明是视觉诱发的电位(VEPS)在适当的字典中具有强烈的稀疏性。灵感来自这个想法,我们以本文介绍了一种基于新的稀疏代表的解决方法来解决VEP提取问题。提取过程在三个阶段进行。首先,不是使用包含脑电图(EEG)和VEPS的混合信号,而是我们利用来自先前试验的EEG,该试验不包含VEPS,以识别EEG自回归(AR)模型的参数。其次,代替移动平均(MA)模型,稀疏表示用于在自回归移动平均(ARMA)模型中模拟VEPS。最后,我们通过使用AR模型计算稀疏系数并导出VEPS。接下来,我们通过合成和实数据测试了所提出的算法的性能,之后我们将具有外源性输入建模的AR模型的结果与基于外源输入建模和混合的基于混合的基于混合的字典的稀疏分量分解方法进行了比较。利用合成数据,然后使用算法来估计通过在不同信噪比(SNR)值(SNR)值的添加模拟EEG损坏的VEPS的P100的延迟。验证表明,即使在低SNR环境中,我们的方法也可以很好地保留VEPS的细节,以便延迟估计。

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