The algorithms based on the technique of optimal $k$-thresholding (OT) were recently proposed for signal recovery, and they are very different from the traditional family of hard thresholding methods. However, the computational cost for OT-based algorithms remains high at the current stage of their development. This stimulates the development of the so-called natural thresholding (NT) algorithm and its variants in this paper. The family of NT algorithms is developed through the first-order approximation of the so-called regularized optimal $k$-thresholding model, and thus the computational cost for this family of algorithms is significantly lower than that of the OT-based algorithms. The guaranteed performance of NT-type algorithms for signal recovery from noisy measurements is shown under the restricted isometry property and concavity of the objective function of regularized optimal $k$-thresholding model. Empirical results indicate that the NT-type algorithms are robust and very comparable to several mainstream algorithms for sparse signal recovery.
翻译:最近为信号的恢复提出了基于最佳美元持有量技术的算法,这些算法与传统的硬阈值方法大不相同。然而,基于OT的算法在目前发展阶段仍然很高。这刺激了所谓的自然阈值算法的发展及其本文中的变异。NT算法的组合是通过所谓的正规化最佳美元持有量模型的一阶近似法发展起来的,因此,这种算法的计算成本大大低于基于OT的算法。NT型算法从噪音测量中恢复信号的保证性能在受限制的等量性属性和正常化最佳美元持有量模型客观功能的精确性能下得到显示。结果显示,NT型算法与一些用于稀有信号恢复的主流算法非常健全和非常相似。