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Enhancing performance of SSVEP-based BCI by unsupervised learning information from test trials*

机译:通过来自测试试验的无监督学习信息来提高基于SSVEP的BCI的性能*

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Steady-State Visual Evoked Potentials (SSVEPs) have become one of the most used neural signals for brain- computer interfaces (BCIs) due to their stability and high signal- to-noise rate. However, the performance of SSVEP-based BCIs would degrade with a few training samples. This study was proposed to enhance the detection of SSVEP by combining the supervised learning information from training samples and the unsupervised learning information from the trial to be tested. A new method, i.e. cyclic shift trials (CST), was proposed to generate new calibration samples from the test data, which were furtherly used to create the templates and spatial filters of task- related component analysis (TRCA). The test-trial templates and spatial filters were combined with training-sample templates and spatial filters to recognize SSVEP. The proposed algorithm was tested on a benchmark dataset. As a result, it reached significantly higher classification accuracy than traditional TRCA when only two training samples were used. Speciflcally, the accuracy was improved by 9.5% for 0.7s data. Therefore, this study demonstrates CST is effective to improve the performance of SSVEP-BCI
机译:稳态视觉诱发电位(SSVEP)由于其稳定性和高信噪比,已成为脑-计算机接口(BCI)上使用最多的神经信号之一。但是,基于SSVEP的BCI的性能会因一些训练样本而降低。提出这项研究的目的是通过结合来自训练样本的监督学习信息和来自待测试试验的无监督学习信息来增强对SSVEP的检测。提出了一种新方法,即循环移位试验(CST),从测试数据中生成新的校准样本,并将其进一步用于创建任务相关组件分析(TRCA)的模板和空间过滤器。测试试验模板和空间过滤器与训练样本模板和空间过滤器结合以识别SSVEP。所提出的算法在基准数据集上进行了测试。结果,当仅使用两个训练样本时,它的分类准确度明显高于传统TRCA。具体而言,对于0.7s数据,准确度提高了9.5%。因此,这项研究表明CST可以有效改善SSVEP-BCI的性能

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