Signal Analysis Using Local Polynomial Approximations

R. Wildhaber, Elizabeth Ren, F. Waldmann, Hans-Andrea Loeliger
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引用次数: 3

Abstract

Local polynomial approximations represent a versatile feature space for time-domain signal analysis. The parameters of such polynomial approximations can be computed by efficient recursions using autonomous linear state space models and often allow analytical solutions for quantities of interest. The approach is illustrated by practical examples including the estimation of the delay difference between two acoustic signals and template matching in electrocardiogram signals with local variations in amplitude and time scale.
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用局部多项式逼近的信号分析
局部多项式近似为时域信号分析提供了一个通用的特征空间。这种多项式近似的参数可以通过使用自主线性状态空间模型的有效递归来计算,并且通常允许对感兴趣的量进行解析解。通过实际算例说明了该方法的有效性,包括估计两声信号之间的延迟差,以及对局部幅度和时间尺度变化的心电图信号进行模板匹配。
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