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Joint Maximum Likelihood Time Delay Estimation of Unknown Event-Related Potential Signals for EEG Sensor Signal Quality Enhancement

机译:未知事件相关电位信号的联合最大似然时延估计,用于增强EEG传感器信号质量

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Electroencephalograms (EEGs) measure a brain signal that contains abundant information about the human brain function and health. For this reason, recent clinical brain research and brain computer interface (BCI) studies use EEG signals in many applications. Due to the significant noise in EEG traces, signal processing to enhance the signal to noise power ratio (SNR) is necessary for EEG analysis, especially for non-invasive EEG. A typical method to improve the SNR is averaging many trials of event related potential (ERP) signal that represents a brain’s response to a particular stimulus or a task. The averaging, however, is very sensitive to variable delays. In this study, we propose two time delay estimation (TDE) schemes based on a joint maximum likelihood (ML) criterion to compensate the uncertain delays which may be different in each trial. We evaluate the performance for different types of signals such as random, deterministic, and real EEG signals. The results show that the proposed schemes provide better performance than other conventional schemes employing averaged signal as a reference, e.g., up to 4 dB gain at the expected delay error of 10°.
机译:脑电图(EEG)可测量大脑信号,其中包含有关人类大脑功能和健康的大量信息。因此,最近的临床脑研究和脑计算机接口(BCI)研究在许多应用中使用了EEG信号。由于EEG轨迹中存在明显的噪声,因此对于EEG分析(特别是对于非侵入性EEG),必须进行信号处理以提高信噪比(SNR)。改善SNR的典型方法是对许多事件相关电位(ERP)信号进行平均试验,这些信号代表大脑对特定刺激或任务的反应。但是,平均对可变延迟非常敏感。在这项研究中,我们提出了两种基于联合最大似然(ML)准则的时间延迟估计(TDE)方案,以补偿每次试验中可能有所不同的不确定延迟。我们评估不同类型信号的性能,例如随机,确定性和实际EEG信号。结果表明,与采用平均信号作为参考的其他常规方案相比,所提出的方案提供了更好的性能,例如,在预期的10°延迟误差下,增益高达4dB。

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