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Semiparametric Curve Alignment and Shift Density Estimation for Biological Data

机译:生物数据的半参数曲线对齐和移动密度估计

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We observe a large number of signals, all of them with identical, although unknown, shape, but with a different random shift. The objective is to estimate the individual time shifts and their distribution. Such an objective appears in several biological applications like neuroscience or ECG signal processing, in which the estimation of the distribution of the elapsed time between repetitive pulses with a possibly low signal-noise ratio, and without a knowledge of the pulse shape is of interest. We suggest an M-estimator leading to a three-stage algorithm: we first split our data set in blocks, then the shift estimation in each block is done by minimizing a cost function based on the periodogram; the estimated shifts are eventually plugged into a standard density estimator. We show that under mild regularity assumptions the density estimate converges weakly to the true shift distribution. The theory is applied both to simulations and to alignment of real ECG signals. The proposed approach outperforms the standard methods for curve alignment and shift density estimation, even in the case of low signal-to-noise ratio, and is robust to numerous perturbations common in ECG signals.
机译:我们观察到大量信号,所有信号的形状相同,尽管未知,但随机移位不同。目的是估计各个时移及其分布。这样的目标出现在诸如神经科学或ECG信号处理之类的几种生物学应用中,其中对可能具有低信噪比且不了解脉冲形状的重复脉冲之间的经过时间分布的估计很感兴趣。我们建议使用一种M估计器,该算法导致一个三阶段算法:首先将数据集分成多个块,然后通过最小化基于周期图的成本函数来完成每个块中的移位估计;估计的位移最终被插入到标准密度估计器中。我们表明,在轻度规律性假设下,密度估算值难以收敛到真实的位移分布。该理论既适用于仿真,也适用于实际ECG信号的对齐。即使在低信噪比的情况下,所提出的方法也优于用于曲线对齐和移位密度估计的标准方法,并且对于ECG信号中常见的许多扰动具有鲁棒性。

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