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Signal Periodic Decomposition With Conjugate Subspaces

机译:共轭子空间的信号周期分解

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In this paper, we focus on hidden period identification and the periodic decomposition of signals. Based on recent results on the Ramanujan subspace, we reveal the conjugate symmetry of the Ramanujan subspace with a set of complex exponential basis functions and represent the subspace as the union of a series of conjugate subspaces. With these conjugate subspaces, the signal periodic model is introduced to characterize the periodic structure of a signal. To achieve the decomposition of the proposed model, conjugate subspace pursuit with periodicity and energy (CSPPE) algorithm is proposed based on two different greedy strategies. The CSPPE is performed iteratively in two stages. In the first stage, the dominant hidden period is chosen with the periodicity strategy. Then, the dominant conjugate subspace is chosen with the energy strategy in the second stage. Compared with the current state-ofthe-art methods for hidden period identification, the main advantages provided by the CSPPE are the following: 1) the capability of identifying all the hidden periods in the range from 1 to the maximum hidden period Q of a signal of any length, without truncating the signal; 2) the ability to identify the time-varying hidden period with its shifted version; and 3) the low computational cost, without generating and using a large over-complete dictionary. Moreover, we provide examples and applications to demonstrate the abilities of the proposed two-stage CSPPE algorithm, which include hidden period identification, signal approximation, time-varying period detection, and pitch detection of speech.
机译:在本文中,我们专注于隐藏周期识别和信号的周期性分解。基于Ramanujan子空间上的最新结果,我们揭示了Ramanujan子空间具有一组复杂的指数基函数的共轭对称性,并将子空间表示为一系列共轭子空间的并集。利用这些共轭子空间,引入信号周期模型来表征信号的周期结构。为了实现所提出模型的分解,基于两种不同的贪婪策略,提出了具有周期性和能量的共轭子空间追踪算法(CSPPE)。 CSPPE分两个阶段进行。在第一阶段,通过周期性策略选择显性隐性周期。然后,在第二阶段利用能量策略选择优势共轭子空间。与当前最新的隐藏时段识别方法相比,CSPPE提供的主要优点如下:1)能够识别从1到最大信号隐藏时段Q范围内的所有隐藏时段任何长度,不截断信号; 2)具有随时间变化的隐藏时段及其移位版本的能力; 3)计算成本低,无需生成和使用大型的超完备字典。此外,我们提供了示例和应用程序来演示所提出的两阶段CSPPE算法的功能,包括隐藏时段识别,信号近似,时变时段检测和语音音高检测。

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