Abstract

Estimating single-trial evoked potentials (EPs) corrupted by the spontaneous electroencephalogram (EEG) can be regarded as signal denoising problem. Sparse coding has significant success in signal denoising and EPs have been proven to have strong sparsity over an appropriate dictionary. In sparse coding, the noise generally is considered to be a Gaussian random process. However, some studies have shown that the background noise in EPs may present an impulsive characteristic which is far from Gaussian but suitable to be modeled by the α-stable distribution (1 < α ≤ 2). Consequently, the performances of general sparse coding will degrade or even fail. In view of this, we present a new sparse coding algorithm using p-norm optimization in single-trial EPs estimating. The algorithm can track the underlying EPs corrupted by α-stable distribution noise, trial-by-trial, without the need to estimate the α value. Simulations and experiments on human visual evoked potentials and event-related potentials are carried out to examine the performance of the proposed approach. Experimental results show that the proposed method is effective in estimating single-trial EPs under impulsive noise environment.

Highlights

  • Evoked potentials (EPs) are time-locked biological signals recorded from the scalp in response to a variety of welldefined external stimuli [1]

  • We proposed a dictionary construction method for the evoked potentials (EPs) signal and a double-trial estimation method based on joint sparse representation [9]

  • We present a novel approach to solving the EP estimating problem under impulsive noise environment based on sparse coding using least mean p-norm (SC-LMP) optimization

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Summary

Introduction

Evoked potentials (EPs) are time-locked biological signals recorded from the scalp in response to a variety of welldefined external stimuli [1]. MOSCA cannot separate the EP and EEG signals sufficiently To solve this problem, we proposed a dictionary construction method for the EP signal and a double-trial estimation method based on joint sparse representation [9]. It has been shown that an α-stable (1 < α ≤ 2) process is more suitable for modeling the background noise in EP observations than is a Gaussian process because the noise is often impulsive and its PDF has a heavy tail This will degrade the performance of the sparse coding algorithm. We present a novel approach to solving the EP estimating problem under impulsive noise environment based on sparse coding using least mean p-norm (SC-LMP) optimization.

Single-Trial Evoked Potential Estimation with SC-LMP
Experiment Results
Conclusion
Conflicts of Interest
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