Shin Younghak, Lee Seungchan, Ahn Minkyu, Cho Hohyun, Jun Sung Chan, Lee Heung-No
School of Information and Communications, Gwangju Institute of Science and Technology, Gwangju, Republic of Korea.
Department of Neuroscience, Brown University, RI, USA.
Comput Biol Med. 2015 Nov 1;66:29-38. doi: 10.1016/j.compbiomed.2015.08.017. Epub 2015 Sep 2.
One of the main problems related to electroencephalogram (EEG) based brain-computer interface (BCI) systems is the non-stationarity of the underlying EEG signals. This results in the deterioration of the classification performance during experimental sessions. Therefore, adaptive classification techniques are required for EEG based BCI applications. In this paper, we propose simple adaptive sparse representation based classification (SRC) schemes. Supervised and unsupervised dictionary update techniques for new test data and a dictionary modification method by using the incoherence measure of the training data are investigated. The proposed methods are very simple and additional computation for the re-training of the classifier is not needed. The proposed adaptive SRC schemes are evaluated using two BCI experimental datasets. The proposed methods are assessed by comparing classification results with the conventional SRC and other adaptive classification methods. On the basis of the results, we find that the proposed adaptive schemes show relatively improved classification accuracy as compared to conventional methods without requiring additional computation.
与基于脑电图(EEG)的脑机接口(BCI)系统相关的主要问题之一是潜在EEG信号的非平稳性。这导致实验过程中分类性能的下降。因此,基于EEG的BCI应用需要自适应分类技术。在本文中,我们提出了基于简单自适应稀疏表示的分类(SRC)方案。研究了针对新测试数据的监督和非监督字典更新技术以及利用训练数据的不相干性度量的字典修改方法。所提出的方法非常简单,不需要对分类器进行重新训练的额外计算。使用两个BCI实验数据集对所提出的自适应SRC方案进行了评估。通过将分类结果与传统SRC和其他自适应分类方法进行比较来评估所提出的方法。基于结果,我们发现与传统方法相比,所提出的自适应方案在不需要额外计算的情况下显示出相对提高的分类准确率。