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Sparse spatial filter via a novel objective function minimization with smooth ℓ1 regularization

机译:通过新颖的目标函数最小化和平滑的ℓ1正则化实现稀疏空间滤波器

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摘要

Common spatial pattern (CSP) method is widely used in brain machine interface (BMI) applications to extract features from the multichannel neural activity through a set of spatial projections. These spatial projections minimize the Rayleigh quotient (RQ) as the objective function, which is the variance ratio of the classes. The CSP method easily overfits the data when the number of training trials is not sufficiently large and it is sensitive to daily variation of multichannel electrode placement, which limits its applicability for everyday use in BMI systems. To overcome these problems, the amount of channels that is used in projections, should be limited to some adequate number. We introduce a spatially sparse projection (SSP) method that exploits the unconstrained minimization of a new objective function with approximated ℓ1 penalty. Unlike the RQ, this new objective function depends on the magnitude of the sparse filter. The SSP method is employed to classify the multiclass ECoG and two class EEG data sets. We compared our results with a recently introduced sparse CSP solution based on ℓ0 norm. Our method outperforms the standard CSP method and provides comparable results to ℓ0 norm based solution and it is associated with less computational complexity. We also conducted several simulation studies on the effect of noisy channel and intersession variability on the performance of the CSP and sparse filters. © 2012 Elsevier Ltd. All rights reserved.
机译:通用空间模式(CSP)方法广泛用于脑机接口(BMI)应用程序,以通过一组空间投影从多通道神经活动中提取特征。这些空间投影将作为目标函数的瑞利商(RQ)最小化,该目标函数是类的方差比。当训练试验的数量不够大时,CSP方法很容易过拟合数据,并且对多通道电极放置的每日变化敏感,这限制了其在BMI系统中日常使用的适用性。为了克服这些问题,投影中使用的通道数量应限制为足够的数量。我们介绍了一种空间稀疏投影(SSP)方法,该方法利用近似objective1罚分的新目标函数的无约束最小化。与RQ不同,此新的目标函数取决于稀疏滤波器的大小。 SSP方法用于对多类ECoG和两类EEG数据集进行分类。我们将结果与最近基于ℓ0范本推出的稀疏CSP解决方案进行了比较。我们的方法优于标准CSP方法,并提供了与基于ℓ0范数的解决方案相当的结果,并且计算复杂度较低。我们还对噪声通道和会话间可变性对CSP和稀疏滤波器的性能进行了一些仿真研究。 ©2012 ElsevierLtd。保留所有权利。

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