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Evaluating the Feasibility of a Novel Approach for SSVEP Detection Accuracy Improvement Using Phase Shifts

机译:评估使用相移提高SSVEP检测精度的新方法的可行性

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The canonical correlation analysis (CCA), double-partial least-squares (DPLS) methods and least absolute shrinkage and selection operator (LASSO) have been proven effectively in detecting the steady-state visual evoked potential (SSVEP) in SSVEP-based brain-computer interface systems. However, the accuracy of SSVEP classification can be affected by phase shifts of the electroencephalography data, so we explored the possibility of improving SSEVP detection using these methods at different phase shifts. After calculating the accuracy at different phases, we found that the phase shifts could affect the accuracy of SSVEP classification, the classification accuracy could improved about 1.1% mostly using the CCA method, meanwhile the comparison of the three methods was made at the same time and some differences between the CCA, DPLS and LASSO methods at the different phase shifts also be found. The results indicated that on the one hand, the accuracy of SSVEP detection was improved with the change of the phase, but on the other hand, although the three methods could obtain high classification accuracy, the DPLS and LASSO method showed larger fluctuations than the CCA method as the phase of the electroencephalography data of each participant or their average changed.
机译:典型相关分析(CCA),双部分最小二乘(DPLS)方法和最小绝对收缩与选择算子(LASSO)已被证明可有效地检测基于SSVEP的大脑中的稳态视觉诱发电位(SSVEP)。计算机接口系统。然而,SSVEP分类的准确性会受到脑电图数据相移的影响,因此我们探索了使用这些方法在不同相移下改进SSEVP检测的可能性。在计算了不同阶段的精度之后,我们发现相移会影响SSVEP分类的准确性,使用CCA方法时,分类精度大部分可以提高约1.1%,同时将这三种方法进行了比较,并且在不同的相移下,CCA,DPLS和LASSO方法之间也存在一些差异。结果表明,一方面,随相位的变化,SSVEP检测的准确性有所提高,但另一方面,尽管这三种方法均能获得较高的分类精度,但DPLS和LASSO方法的波动幅度大于CCA。方法作为每个参与者的脑电图数据的相位或其平均值的变化。

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