FHR时间序列中缺失样本的自适应恢复方法

V. Oikonomou, J. Spilka, C. Stylios, L. Lhotská
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引用次数: 14

摘要

缺失的数据导致严重的问题,自动评估胎儿心率(FHR)系列。在这项工作中,我们提出了一个算法来抑制这个问题。具体地说,提出了一种基于两个步骤的自适应方法。第一步涉及重建步骤,我们使用经验字典获得缺失数据的估计。第二步包括使用第一步更新的值构造字典。上述两个步骤迭代应用,直到收敛。该方法每次对字典和重构的时间序列进行调整,以适应我们获得的新信息。实际和模拟实验的结果表明了该方法的有效性。具体而言,与三次样条插值方法进行了比较,结果表明该方法的重建能力提高了4 ~ 9dB。
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An adaptive method for the recovery of missing samples from FHR time series
Missing data cause serious problem for automatic evaluation of the fetal heart rate(FHR) series. In this work we present an algorithm to surpress this problem. More specifically, an adaptive approach is proposed based on two steps. The first step concerns the reconstruction step where we obtain an estimate of the missing data using an empirical dictionary. The second step consists from the construction of the dictionary using the updated values from the first step. The above two steps are applied iteratively until convergence. The method adapts each time the dictionary and the reconstructed time series to the new information that we gain. Results on real and simulated experiments have shown the usefullness of our approach. More specifically, a comparison with cubic spline interpolation is performed and have shown that the proposed approach achieved 4 to 9dB better reconstruction ability.
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