Algorithms for signal recovery in compressed sensing (CS) are often improved by stabilization techniques, such as damping, or the less widely known so-called fractional approach, which is based on the expectation propagation (EP) framework. These procedures are used to increase the steady-state performance, i.e., the performance after convergence, or assure convergence, when this is otherwise not possible. In this paper, we give a thorough introduction and interpretation of several stabilization approaches. The effects of the stabilization procedures are examined and compared via numerical simulations and we show that a combination of several procedures can be beneficial for the performance of the algorithm.
翻译:压缩遥感(CS)信号恢复的比值往往通过稳定技术(例如按部就班)或以预期传播框架为基础、不太广为人知的所谓分数法来改进,这些程序用来提高稳定状态的性能,即趋同后的性能,或确保无法达到的趋同。在本文件中,我们透彻地介绍和解释几种稳定化办法。稳定化程序的效果通过数字模拟加以审查和比较,我们表明,将若干程序结合起来可以有利于算法的性能。