Bera Sutanu, Roy Rinku, Sikdar Debdeep, Kar Aupendu, Mukhopadhyay Rupsha, Mahadevappal Manjunatha
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:5081-5084. doi: 10.1109/EMBC.2018.8513421.
Common Spectral Pattern (CSP) algorithm remains predominant for feature extraction from multichannel EEG motor imagery data. However, multiclass classification of from this featureset has been a challenging job. Different approaches have been proposed to be applied on featureset of different EEG subbands to achieve significant classification accuracy. Ensemble learning is very effective in this context to achieve higher accuracy in Brain-Computer Interface (BCI) domain. In this study, we have proposed enhanced classification algorithms to achieve higher classification accuracies. The methods were evaluated against the motor imagery data from Dataset 2a of the publicly available BCI Competition IV (2008). This dataset consists of 22 channels EEG data of 9 subjects for four different movements. A tree based ensemble approach for supervised classification, Extra-Trees algorithm, has been proposed in this paper and also evaluated for its efficacy on this dataset to classify between left hand and right hand movement imaginations. Moreover, this classifier has its inherent capability to select optimum features. Furthermore, in this paper an extension of the binary classification into multiclass domain is also implemented with error correcting output codes (ECOC) approach using the same dataset. Subject-specific frequency bands $\alpha$ (8-12Hz) and $\beta$ (12-30Hz) along with $HG$ (70-100Hz) were considered to extract CSP features. We have achieved an individual peak accuracy of 98ȥ and 84ȥ in binary class and multiclass classification respectively. Furthermore, the results yielded a mean kappa value of 0.58 across all the subjects. This kappa value is higher than of the winner of competition and also from the most of the other approaches applied in this dataset.
通用谱模式(CSP)算法在从多通道脑电图运动想象数据中提取特征方面仍然占据主导地位。然而,对该特征集进行多类分类一直是一项具有挑战性的工作。人们提出了不同的方法应用于不同脑电图子带的特征集,以实现显著的分类准确率。在这种情况下,集成学习在脑机接口(BCI)领域非常有效地实现了更高的准确率。在本研究中,我们提出了增强的分类算法以实现更高的分类准确率。这些方法针对公开可用的BCI竞赛IV(2008)的数据集2a中的运动想象数据进行了评估。该数据集由9名受试者的22通道脑电图数据组成,用于四种不同的运动。本文提出了一种基于树的监督分类集成方法——极端随机树算法,并评估了其在该数据集上对左手和右手运动想象进行分类的有效性。此外,该分类器具有选择最优特征的固有能力。此外,本文还使用相同的数据集,通过纠错输出码(ECOC)方法将二分类扩展到多类领域。考虑了特定受试者的频段α(8 - 12Hz)、β(12 - 30Hz)以及HG(70 - 100Hz)来提取CSP特征。我们在二分类和多类分类中分别实现了个体峰值准确率98%和84%。此外,结果在所有受试者中产生了平均kappa值0.58。这个kappa值高于竞赛获胜者的值,也高于应用于该数据集的大多数其他方法的值。