Rabiul Islam Md, Khademul Islam Molla Md, Nakanishi Masaki, Tanaka Toshihisa
Department of Electronic and Information Engineering, Tokyo University of Agriculture and Technology, Koganei-shi, Tokyo 184-8588, Japan.
J Neural Eng. 2017 Apr;14(2):026007. doi: 10.1088/1741-2552/aa5847. Epub 2017 Jan 10.
Recently developed effective methods for detection commands of steady-state visual evoked potential (SSVEP)-based brain-computer interface (BCI) that need calibration for visual stimuli, which cause more time and fatigue prior to the use, as the number of commands increases. This paper develops a novel unsupervised method based on canonical correlation analysis (CCA) for accurate detection of stimulus frequency.
A novel unsupervised technique termed as binary subband CCA (BsCCA) is implemented in a multiband approach to enhance the frequency recognition performance of SSVEP. In BsCCA, two subbands are used and a CCA-based correlation coefficient is computed for the individual subbands. In addition, a reduced set of artificial reference signals is used to calculate CCA for the second subband. The analyzing SSVEP is decomposed into multiple subband and the BsCCA is implemented for each one. Then, the overall recognition score is determined by a weighted sum of the canonical correlation coefficients obtained from each band.
A 12-class SSVEP dataset (frequency range: 9.25-14.75 Hz with an interval of 0.5 Hz) for ten healthy subjects are used to evaluate the performance of the proposed method. The results suggest that BsCCA significantly improves the performance of SSVEP-based BCI compared to the state-of-the-art methods. The proposed method is an unsupervised approach with averaged information transfer rate (ITR) of 77.04 bits min across 10 subjects. The maximum individual ITR is 107.55 bits min for 12-class SSVEP dataset, whereas, the ITR of 69.29 and 69.44 bits min are achieved with CCA and NCCA respectively.
The statistical test shows that the proposed unsupervised method significantly improves the performance of the SSVEP-based BCI. It can be usable in real world applications.
最近开发了基于稳态视觉诱发电位(SSVEP)的脑机接口(BCI)检测命令的有效方法,随着命令数量的增加,这些方法需要对视觉刺激进行校准,这在使用前会导致更多时间消耗和疲劳。本文开发了一种基于典型相关分析(CCA)的新型无监督方法,用于准确检测刺激频率。
一种称为二进制子带CCA(BsCCA)的新型无监督技术在多带方法中实现,以提高SSVEP的频率识别性能。在BsCCA中,使用两个子带,并为各个子带计算基于CCA的相关系数。此外,使用一组精简的人工参考信号来计算第二个子带的CCA。将分析的SSVEP分解为多个子带,并对每个子带实施BsCCA。然后,通过从每个频段获得的典型相关系数的加权和来确定总体识别分数。
使用针对十名健康受试者的12类SSVEP数据集(频率范围:9.25 - 14.75 Hz,间隔0.5 Hz)来评估所提出方法的性能。结果表明,与现有方法相比,BsCCA显著提高了基于SSVEP的BCI的性能。所提出的方法是一种无监督方法,10名受试者的平均信息传输率(ITR)为77.04比特/分钟。对于12类SSVEP数据集,最大个体ITR为107.55比特/分钟,而使用CCA和NCCA分别实现的ITR为69.29和69.44比特/分钟。
统计测试表明,所提出的无监督方法显著提高了基于SSVEP的BCI的性能。它可用于实际应用。