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Convex fused lasso denoising with non-convex regularization and its use for pulse detection

机译:具有非凸正则化的凸融合套索去噪及其在脉冲检测中的应用

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We propose a convex formulation of the fused lasso signal approximation problem consisting of non-convex penalty functions. The fused lasso signal model aims to estimate a sparse piecewise constant signal from a noisy observation. Originally, the ???1 norm was used as a sparsity-inducing convex penalty function for the fused lasso signal approximation problem. However, the ???1 norm underestimates signal values. Non-convex sparsity-inducing penalty functions better estimate signal values. In this paper, we show how to ensure the convexity of the fused lasso signal approximation problem with non-convex penalty functions. We further derive a computationally efficient algorithm using the majorization-minimization technique. We apply the proposed fused lasso method for the detection of pulses.
机译:我们提出了由非凸罚函数组成的融合套索信号逼近问题的凸公式。融合的套索信号模型旨在根据嘈杂的观测值估计稀疏的分段恒定信号。最初,将1范数用作引起融合套索信号逼近问题的稀疏性凸罚函数。但是,1范数低估了信号值。非凸稀疏诱导罚函数可以更好地估计信号值。在本文中,我们展示了如何使用非凸罚函数来确保融合的套索信号逼近问题的凸性。我们进一步使用主化-最小化技术推导了一种计算有效的算法。我们将提出的融合套索方法用于脉冲检测。

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