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TFD Thresholding In Estimating The Number of EEG Components And The Dominant IF Using The Short-Term Rényi Entropy

机译:TFD阈值估计脑电图组件数量和占主导地位的阈值,如果使用短期式Rényi熵

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Time-frequency (TF) based EEG signal analysis using the local or short-term Rényi entropy often requires low-energy cross-terms and noise suppression prior to the estimation of the local number of components and the dominant component instantaneous frequency (IF). This can be easily accomplished by thresholding in the TF domain with the preset TF threshold value, often chosen empirically. The paper investigates the sensitivity of the method based on the local Rényi entropy to the chosen threshold value. The study was performed on real-life left and right hand movements EEG signals. As shown in the paper, the number of the EEG components extracted using the short-term Rényi entropy is highly sensitive to the chosen TF threshold value, unlike the dominant IF which was shown to be highly robust to TF thresholding. Hence, characterization of the EEG signals using the short-term Rényi entropy should include both detecting the number of EEG components and the dominant component IF estimation.
机译:基于时频(TF)的EEG信号分析使用本地或短期Rényi熵通常需要低能量跨术语和噪声抑制,在估计本地组件和主要分量瞬时频率(IF)之前。这可以通过在TF域中使用预设的TF阈值阈值来容易地完成,通常经验地选择。本文研究了基于本地Rényi熵的方法对所选阈值的灵敏度。该研究在现实生活中进行了左手运动EEG信号。如本文所示,与所选择的TF阈值相比,使用短期Rényi熵提取的EEG组件的数量对所选择的TF阈值非常敏感,与所示对于TF阈值高度稳定的主导,与主导相比。因此,使用短期Rényi熵的EEG信号的表征应包括检测EEG组件的数量和主导组件,如果估计。

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