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Perturbation-Based Regularization for Signal Estimation in Linear Discrete Ill-posed Problems

机译:线性离散不适定问题中基于扰动的正则化信号估计

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摘要

Estimating the values of unknown parameters from corrupted measured data faces a lot of challenges in ill-posed problems. In such problems, many fundamental estimation methods fail to provide a meaningful stabilized solution. In this work, we propose a new regularization approach and a new regularization parameter selection approach for linear least-squares discrete ill-posed problems. The proposed approach is based on enhancing the singular-value structure of the ill-posed model matrix to acquire a better solution. Unlike many other regularization algorithms that seek to minimize the estimated data error, the proposed approach is developed to minimize the mean-squared error of the estimator which is the objective in many typical estimation scenarios. The performance of the proposed approach is demonstrated by applying it to a large set of real-world discrete ill-posed problems. Simulation results demonstrate that the proposed approach outperforms a set of benchmark regularization methods in most cases. In addition, the approach also enjoys the lowest runtime and offers the highest level of robustness amongst all the tested benchmark regularization methods.
机译:从损坏的测量数据中估算未知参数的值面临不适定问题的许多挑战。在此类问题中,许多基本估计方法无法提供有意义的稳定解决方案。在这项工作中,我们针对线性最小二乘离散不适定问题提出了一种新的正则化方法和新的正则化参数选择方法。所提出的方法基于增强不适定模型矩阵的奇异值结构以获得更好的解决方案。与许多其他试图最小化估计数据误差的正则化算法不同,所提出的方法被开发来最小化估计器的均方误差,这是许多典型估计方案中的目标。通过将其应用于大量实际的离散不适定问题,证明了所提出方法的性能。仿真结果表明,在大多数情况下,所提出的方法优于一组基准正则化方法。此外,在所有经过测试的基准正则化方法中,该方法还具有最低的运行时间并提供了最高级别的鲁棒性。

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