Revisit 1D Total Variation restoration problem with new real-time algorithms for signal and hyper-parameter estimations

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Publication:6356317

arXiv2012.09481MaRDI QIDQ6356317

Author name not available (Why is that?)

Publication date: 17 December 2020

Abstract: 1D Total Variation (TV) denoising, considering the data fidelity and the Total Variation (TV) regularization, proposes a good restored signal preserving shape edges. The main issue is how to choose the weight lambda balancing those two terms. In practice, this parameter is selected by assessing a list of candidates (e.g. cross validation), which is inappropriate for the real time application. In this work, we revisit 1D Total Variation restoration algorithm proposed by Tibshirani and Taylor. A heuristic method is integrated for estimating a good choice of lambda based on the extremums number of restored signal. We propose an offline version of restoration algorithm in O(n log n) as well as its online implementation in O(n). Combining the rapid algorithm and the automatic choice of lambda, we propose a real-time automatic denoising algorithm, providing a large application fields. The simulations show that our proposition of lambda has a similar performance as the states of the art.




Has companion code repository: https://github.com/zhanhaoliu09/auto_tv_denoise








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