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Independent Vector Analysis for SSVEP Signal Enhancement, Detection, and Topographical Mapping

机译:SSVEP信号增强,检测和地形映射的独立载体分析

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摘要

Abstract Steady state visual evoked potentials (SSVEPs) have been identified as an effective solution for brain computer interface (BCI) systems as well as for neurocognitive investigations. SSVEPs can be observed in the scalp-based recordings of electroencephalogram signals, and are one component buried amongst the normal brain signals and complex noise. We present a novel method for enhancing and improving detection of SSVEPs by leveraging the rich joint blind source separation framework using independent vector analysis (IVA). IVA exploits the diversity within each dataset while preserving dependence across all the datasets. This approach is shown to enhance the detection of SSVEP signals across a range of frequencies and subjects for BCI systems. Furthermore, we show that IVA enables improved topographic mapping of the SSVEP propagation providing a promising new tool for neuroscience and neurocognitive research.
机译:摘要稳态视觉诱发电位(SSVEPS)已被识别为脑电脑界面(BCI)系统以及神经认知研究的有效解决方案。 可以在脑电图信号的基于头皮的录制中观察到SSVEPS,并且是一个组件在正常的脑信号和复杂噪声中掩埋。 我们通过使用独立载体分析(IVA)利用丰富的联合盲源分离框架提高了一种提高和改善SSVEPS检测的新方法。 IVA利用每个数据集中的多样性,同时保留在所有数据集中的依赖项。 示出该方法以增强跨越BCI系统的频率和受试者的SSVEP信号的检测。 此外,我们表明IVA能够改进SSVEP传播的地形映射,为神经科学和神经认知研究提供了一个有希望的新工具。

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