稀疏贝叶斯学习与字典细化超分辨率随时间

D. Shutin, B. Vexler
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引用次数: 4

摘要

本文提出了一种基于字典细化(SBL-DR)算法的稀疏贝叶斯学习的扩展,用于时变稀疏信号的超分辨率估计。这样的信号被表示为未知但固定数量的狄拉克测度与时变支持的叠加;因此,信号在每个时刻都是稀疏的,但狄拉克测量的位置是允许变化的。为了恢复这些信号,提出了一个优化框架,该框架结合了SBL-DR技术和一个惩罚项,该惩罚项对支持随时间变化施加平滑约束。与最先进的方法(通常将参数估计方案与一些跟踪滤波器相结合)相比,所提出的方法导致单个目标函数,该目标函数允许时变函数(轨迹)的稀疏叠加的联合恢复。提出并分析了相应成本函数高效优化的数值算法;以时变多径信道参数估计为例,比较了该算法与卡尔曼增强超分辨率跟踪算法的性能。
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Sparse Bayesian learning with dictionary refinement for super-resolution through time
This work proposes an extension of a sparse Bayesian learning with dictionary refinement (SBL-DR) algorithm for a super-resolution estimation of time-varying sparse signals. Such signals are represented as a superposition of unknown but fixed number of Dirac measures with a time-varying support; as such the signal is sparse at each moment of time yet locations of Dirac measures are allowed to vary. To recover such signals an optimization framework is proposed that combines SBL-DR techniques and a penalty term that imposes smoothness constraints on the support variations in time. In contrast to state-of-the-art approaches, which typically combine parameter estimation schemes with some tracking filters, the proposed approach leads to a single objective function that permits a joint recovery of a sparse superposition of time-varying functions (trajectories). A numerical algorithm for efficient optimization of the corresponding cost function is proposed and analyzed; its performance is compared to a Kalman Enhanced Superresolution Tracking algorithm on an example of estimating parameters of time-varying multipath channels.
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