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首页> 外文期刊>IEEE Transactions on Signal Processing >Basis Pursuit Denoise With Nonsmooth Constraints
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Basis Pursuit Denoise With Nonsmooth Constraints

机译:具有不平滑约束的基本追踪噪声

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Level-set optimization formulations with data-driven constraints minimize a regularization functional subject to matching observations to a given error level. These formulations are widely used, particularly for matrix completion and sparsity promotion in data interpolation and denoising. The misfit level is typically measured in the l(2) norm, or other smooth metrics. In this paper, we present a new flexible algorithmic framework that targets nonsmooth level-set constraints, including l(1), l(infinity), and even l(0) norms. These constraints give greater flexibility for modeling deviations in observation and denoising, and have significant impact on the solution. Measuring error in the l(1) and l(0) norms makes the result more robust to large outliers, while matching many observations exactly. We demonstrate the approach for basis pursuit denoise (BPDN) problems as well as for extensions of BPDN to matrix factorization, with applications to interpolation and denoising of 4D seismic data. The new methods are particularly promising for seismic applications, where the amplitude in the data varies significantly, and measurement noise in low-amplitude regions can wreak havoc for standard Gaussian error models.
机译:具有数据驱动约束的水平集优化公式可将正则化函数最小化,以使观测值与给定错误级别匹配。这些公式被广泛使用,尤其是在数据插值和去噪中,用于矩阵完成和稀疏度提升。失配水平通常以l(2)规范或其他平滑指标进行衡量。在本文中,我们提出了一种针对非平滑级别集约束的新的灵活算法框架,包括l(1),l(infinity)甚至l(0)范数。这些约束为建模观察和去噪中的偏差提供了更大的灵活性,并对解决方案产生了重大影响。在l(1)和l(0)范数中测量误差使结果对较大的离群值更鲁棒,同时可以精确匹配许多观测值。我们演示了基本追踪降噪(BPDN)问题以及将BPDN扩展到矩阵分解的方法,并将其应用于4D地震数据的插值和去噪。新方法对于地震应用特别有前途,因为地震中数据的振幅变化很大,并且在低振幅区域中的测量噪声可能会对标准的高斯误差模型造成严重破坏。

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