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Signal reconstruction by conjugate gradient algorithm based on smoothing l(1)-norm

机译:基于平滑L(1)-norm的共轭梯度算法的信号重建

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摘要

The l(1)-norm regularized minimization problem is a non-differentiable problem and has a wide range of applications in the field of compressive sensing. Many approaches have been proposed in the literature. Among them, smoothing l(1)-norm is one of the effective approaches. This paper follows this path, in which we adopt six smoothing functions to approximate the l(1)-norm. Then, we recast the signal recovery problem as a smoothing penalized least squares optimization problem, and apply the nonlinear conjugate gradient method to solve the smoothing model. The algorithm is shown globally convergent. In addition, the simulation results not only suggest some nice smoothing functions, but also show that the proposed algorithm is competitive in view of relative error.
机译:L(1)-norm正常化最小化问题是一个非可分辨性的问题,并且在压缩感测领域具有广泛的应用。 在文献中提出了许多方法。 其中,平滑L(1)-norm是有效方法之一。 本文遵循这条路径,其中我们采用六个平滑功能来近似L(1)-norm。 然后,我们重新开始信号恢复问题作为平滑惩罚最小二乘优化问题,并应用非线性共轭梯度方法来解决平滑模型。 该算法显示全局会聚。 此外,仿真结果不仅表明了一些良好的平滑功能,还表明,考虑到相对误差,所提出的算法是竞争力的。

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