周期信号去噪:基于拉马努金滤波器组和字典的分析-综合框架

Pranav Kulkarni, P. Vaidyanathan
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引用次数: 3

摘要

拉马努金滤波器组(RFB)过去被用于识别数据中的周期性。这些是分析滤波器组,没有合成对应的原始信号的完美重建,因此它们对去噪周期信号没有用处。本文提出了一种用于离散周期信号去噪的混合分析-综合框架。合成通过基于RFB分析滤波器的输出能量设计的修剪字典进行。该框架的一个独特特性是,与其他方法不同,去噪后的输出信号保证是周期性的。对于大范围的输入噪声水平,该方法实现了稳定的高信噪比增益,优于许多传统的去噪技术。
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Periodic Signal Denoising: An Analysis-Synthesis Framework Based on Ramanujan Filter Banks and Dictionaries
Ramanujan filter banks (RFB) have in the past been used to identify periodicities in data. These are analysis filter banks with no synthesis counterpart for perfect reconstruction of the original signal, so they have not been useful for denoising periodic signals. This paper proposes to use a hybrid analysis-synthesis framework for denoising discrete-time periodic signals. The synthesis occurs via a pruned dictionary designed based on the output energies of the RFB analysis filters. A unique property of the framework is that the denoised output signal is guaranteed to be periodic unlike any of the other methods. For a large range of input noise levels, the proposed approach achieves a stable and high SNR gain outperforming many traditional denoising techniques.
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