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Optimal Wavelet Selection for Signal Denoising. | LitMetric

Optimal Wavelet Selection for Signal Denoising.

IEEE Access

Department of Chemistry and Chemical Biology, Cornell University, Ithaca, NY 14853, USA.

Published: March 2024

AI Article Synopsis

  • Wavelet denoising is key for effectively removing noise from signals, with mother wavelet selection crucial for differentiating noise and signal coefficients.
  • The paper presents an empirical method for optimal wavelet selection based on the sparsity of Detail components, which improves over traditional trial-and-error approaches.
  • Results show that the mean of sparsity change increases with the Signal-to-Noise Ratio (SNR), indicating that fewer wavelets are needed for low SNR data while multiple wavelets can be effective for higher SNR scenarios.

Article Abstract

Wavelet denoising plays a key role in removing noise from signals and is widely used in many applications. In denoising, selection of the mother wavelet is desirable for maximizing the separation of noise and signal coefficients in the wavelet domain for effective noise thresholding. At present, wavelet selection is carried out in a heuristic manner or using a trial-and-error that is time consuming and prone to error, including human bias. This paper introduces a universal method to select optimal wavelets based on the sparsity of Detail components in the wavelet domain, an empirical approach. A mean of sparsity change ( ) parameter is defined that captures the mean variation of noisy Detail components. The efficacy of the presented method is tested on simulated and experimental signals from Electron Spin Resonance spectroscopy at various SNRs. The results reveal that the values of signal vary abruptly between wavelets, whereas for noise it displays similar values for all wavelets. For low Signal-to-Noise Ratio (SNR) data, the change in between highest and second highest value is ≈ 8 - 10% and for high SNR data it is around 5%. The mean of sparsity change increases with the SNR of the signal, which implies that multiple wavelets can be used for denoising a signal, whereas, the signal with low SNR can only be efficiently denoised with a few wavelets. Either a single wavelet or a collection of optimal wavelets (i.e., top five wavelets) should be selected from the highest values. The code is available on GitHub and the signalsciencelab.com website.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11486496PMC
http://dx.doi.org/10.1109/access.2024.3377664DOI Listing

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