Extraction of sparse spatial filters using Oscillating Search

I. Onaran, N. Ince, A. Abosch, A. Cetin
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引用次数: 1

Abstract

Common Spatial Pattern algorithm (CSP) is widely used in Brain Machine Interface (BMI) technology to extract features from dense electrode recordings by using their weighted linear combination. However, the CSP algorithm, is sensitive to variations in channel placement and can easily overfit to the data when the number of training trials is insufficient. Construction of sparse spatial projections where a small subset of channels is used in feature extraction, can increase the stability and generalization capability of the CSP method. The existing ℓ0 norm based sub-optimal greedy channel reduction methods are either too complex such as Backward Elimination (BE) which provided best classification accuracies or have lower accuracy rates such as Recursive Weight Elimination (RWE) and Forward Selection (FS) with reduced complexity. In this paper, we apply the Oscillating Search (OS) method which fuses all these greedy search techniques to sparsify the CSP filters. We applied this new technique on EEG dataset IVa of BCI competition III. Our results indicate that the OS method provides the lowest classification error rates with low cardinality levels where the complexity of the OS is around 20 times lower than the BE.
基于振荡搜索的稀疏空间滤波器提取
公共空间模式算法(Common Spatial Pattern algorithm, CSP)被广泛应用于脑机接口(BMI)技术中,通过对密集电极记录进行加权线性组合来提取特征。然而,CSP算法对通道位置的变化很敏感,并且在训练试验次数不足时容易对数据过拟合。构建稀疏空间投影,利用一小部分通道进行特征提取,可以提高CSP方法的稳定性和泛化能力。现有的基于l0范数的次优贪婪信道约简方法要么过于复杂,如提供最佳分类精度的后向消去法(BE),要么准确率较低,如复杂度较低的递推权消去法(RWE)和前向选择法(FS)。在本文中,我们采用振荡搜索(OS)方法,融合了所有这些贪婪搜索技术来稀疏化CSP滤波器。我们将这种新技术应用于脑机接口比赛III的脑电数据集IVa。我们的结果表明,OS方法提供了最低的分类错误率和低基数水平,其中OS的复杂性比BE低20倍左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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