Laguna P, Jané R, Meste O, Poon P W, Caminal P, Rix H, Thakor N V
Institut de Cibernètica, Universitat Politècnica de Catalunya-CSIC, Barclona, Spain.
IEEE Trans Biomed Eng. 1992 Oct;39(10):1032-44. doi: 10.1109/10.161335.
Many bioelectric signals result from the electrical response of physiological systems to an impulse that can be internal (ECG signals) or external (evoked potentials). In this paper an adaptive impulse correlated filter (AICF) for event-related signals that are time-locked to a stimulus is presented. This filter estimates the deterministic component of the signal and removes the noise uncorrelated with the stimulus, even if this noise is colored, as in the case of evoked potentials. The filter needs two inputs: the signal (primary input) and an impulse correlated with the deterministic component (reference input). We use the LMS algorithm to adjust the weights in the adaptive process. First, we show that the AICF is equivalent to exponentially weighted averaging (EWA) when using the LMS algorithm. A quantitative analysis of the signal-to-noise ratio improvement, convergence, and misadjustment error is presented. A comparison of the AICF with ensemble averaging (EA) and moving window averaging (MWA) techniques is also presented. The adaptive filter is applied to real high-resolution ECG signals and time-varying somatosensory evoked potentials.
许多生物电信号源于生理系统对内部(心电图信号)或外部(诱发电位)冲动的电响应。本文提出了一种用于与刺激时间锁定的事件相关信号的自适应脉冲相关滤波器(AICF)。即使噪声是有色的,如诱发电位的情况,该滤波器也能估计信号的确定性分量并去除与刺激不相关的噪声。该滤波器需要两个输入:信号(主输入)和与确定性分量相关的脉冲(参考输入)。我们使用最小均方(LMS)算法在自适应过程中调整权重。首先,我们表明在使用LMS算法时,AICF等同于指数加权平均(EWA)。给出了信噪比改善、收敛和失调误差的定量分析。还给出了AICF与总体平均(EA)和移动窗口平均(MWA)技术的比较。该自适应滤波器应用于实际的高分辨率心电图信号和时变体感诱发电位。