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Dyadic lifting wavelet based signal detection

机译:基于二进提升小波的信号检测

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摘要

Local regularities of a signal contain important information such as edges in an image and QRS complexes in an Electrocardiogram (ECG). In order to detect such local regularities in the signal, wavelet transform has been focused on as a powerful tool for signal processing applications. Wavelet maxima at the time in which the signal abruptly changes are usually large in amplitude. However, with only the magnitude of the wavelet maxima the features of the signal cannot be known in detail. Mallat et al. proposed the Lipchitz regularity for observing signal cross scales in multiresolution signal analysis, but its computational cost was relatively expensive. This paper presents a novel method for signal detection using lifting dyadic wavelet transform, which has the time-invariant property. The lifting wavelet parameters contained in Swelden's formula were tuned, adapting them to the signals to be detected. The method for tuning these parameters was to learn the features of the target signals in the multiresolution analysis. To evaluate our methods we applied them to detect the QRS complexes contained in an ECG. The results showed that our methods were useful to detect target signals accurately.
机译:信号的局部规律性包含重要信息,例如图像中的边缘和心电图(ECG)中的QRS复合波。为了检测信号中的这种局部规律性,小波变换已被聚焦为信号处理应用程序的强大工具。信号突然变化时的小波最大值通常幅度较大。但是,仅凭小波最大值的大小,就无法详细了解信号的特征。 Mallat等。为了提出多分辨率信号分析中信号跨尺度的Lipchitz正则性,但其计算成本相对较高。本文提出了一种采用提升二进小波变换的信号检测方法,该方法具有时不变性。调整了Swelden公式中包含的提升小波参数,使其适应要检测的信号。调整这些参数的方法是在多分辨率分析中学习目标信号的特征。为了评估我们的方法,我们将它们应用于检测ECG中包含的QRS络合物。结果表明,我们的方法可用于准确检测目标信号。

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