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A Methodology for Synthesizing Interdependent Multichannel EEG Data with a Comparison Among Three Blind Source Separation Techniques

机译:三种盲源分离技术之间比较的相互依赖的多通道EEG数据合成方法

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In this paper, we introduce a novel method for constructing synthetic, but realistic, data of four Electroencephalography (EEG) channels. The data generation technique relies on imitating the relationships between real EEG data spatially distributed over a closed-circle. The constructed synthetic dataset establishes ground truth that can be used to test different source separation techniques. The work then evaluates three projection techniques - Principal Component Analysis (PCA), Independent Component Analysis (ICA) and Canonical Component Analysis (CCA) - for source identification and noise removal on the constructed dataset. These techniques are commonly used within the EEG community. EEG data is known to be highly sensitive signals that get affected by many relevant and irrelevant sources including noise and artefacts. Since we know ground truth in a synthetic dataset, we used differential evolution as a global optimisation method to approximate the "ideal" transform that need to be discovered by a source separation technique. We then compared this transformation with the findings of PCA, ICA and CCA. Results show that all three techniques do not provide optimal separation between the noisy and relevant components, and hence can lead to loss of useful information when the noisy components are removed.
机译:在本文中,我们介绍了一种新颖的方法来构建四个脑电图(EEG)通道的合成但真实的数据。数据生成技术依赖于模拟在一个闭合圆上空间分布的真实EEG数据之间的关系。构建的综合数据集建立了可用于测试不同源分离技术的地面真相。然后,工作评估了三种投影技术-主成分分析(PCA),独立成分分析(ICA)和规范成分分析(CCA)-用于在构造的数据集上进行源识别和噪声去除。这些技术通常在EEG社区内使用。已知EEG数据是高度敏感的信号,会受到许多相关和不相关源(包括噪声和伪像)的影响。由于我们知道合成数据集中的基本事实,因此我们使用差分演化作为全局优化方法来近似需要通过源分离技术发现的“理想”变换。然后,我们将这种转变与PCA,ICA和CCA的发现进行了比较。结果表明,这三种技术都无法在嘈杂的成分和相关成分之间提供最佳的分离,因此,当除去有噪的成分时,可能会导致有用信息的丢失。

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