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Novel signal shape descriptors through wavelet transforms and dimensionality reduction

机译:通过小波变换和降维的新型信号形状描述符

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The wavelet transform is a powerful tool for capturing the joint time-frequency characteristics of a signal. However, the resulting wavelet coefficients are typically high-dimensional, since at each time sample the wavelet transform is evaluated at a number of distinct scales. Unfortunately, modelling these coefficients can be problematic because of the large number of parameters needed to capture the dependencies between different scales. In this paper we investigate the use of algorithms from the field of dimensionality reduction to extract informative and compact descriptions of shape from wavelet coefficients. These low-dimensional shape descriptors lead to models that are governed by only a small number of parameters and can be learnt successfully from limited amounts of data. The validity of our approach is demonstrated on the task of automatically segmenting an electrocardiogram signal into its constituent waveform features.
机译:小波变换是捕获信号联合时频特性的强大工具。但是,所得的小波系数通常是高维的,因为在每次采样时,小波变换都是以许多不同的比例进行评估的。不幸的是,由于捕获不同尺度之间的依赖关系需要大量参数,因此对这些系数进行建模可能会出现问题。在本文中,我们研究了降维领域中算法的使用,以从小波系数中提取形状信息丰富而紧凑的描述。这些低维形状描述符生成的模型仅由少量参数控制,并且可以从数量有限的数据中成功学习。将心电图信号自动分段为其组成波形特征的任务证明了我们方法的有效性。

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