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Detection of Propagating Phase Gradients in EEG Signals using Model Field Theory of Non-Gaussian Mixtures

机译:使用非高斯混合模型场理论检测EEG信号中的传播相位梯度

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Model Field Theory (MFT) is a powerful tool of pattern recognition, which has been used successfully for various tasks involving noisy data and high level of clutter. Detection of spatio-temporal activity patterns in EEG experiments is a very challenging task and it is well-suited for MFT implementation. Previous work on applying MFT for EEG analysis used Gaussian assumption on the mixture components. The present work uses non-Gaussian components for the description of propagating phase-cones, which are more realistic models of the experimentally observed physiological processes. This work introduces MFT equations for non-Gaussian transient processes, and describes the identification algorithm. The method is demonstrated using simulated phase cone data.
机译:模型字段理论(MFT)是一种强大的模式识别工具,已成功用于涉及嘈杂数据和高水平杂乱的各种任务。脑电图实验中的时空活动模式的检测是一个非常具有挑战性的任务,它非常适合MFT实现。以前的应用MFT用于EEG分析使用了对混合物组分的高斯假设。本作本作品使用非高斯组件进行传播相锥的描述,这是实验观察到的生理过程的更现实的模型。这项工作引入了非高斯瞬态过程的MFT方程,并描述了识别算法。使用模拟相位锥数据来证明该方法。

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