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Compressive Parameter Estimation with Earth Mover's Distance via K-Median Clustering

机译:通过K-MEDIAN聚类与地球移动器距离的压缩参数估计

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In recent years, sparsity and compressive sensing have attracted significant attention in parameter estimation tasks, including frequency estimation, delay estimation, and localization. Parametric dictionaries collect observations for a sampling of the parameter space and can yield sparse representations for the signals of interest when the sampling is sufficiently dense. While this dense sampling can lead to high coherence in the dictionary, it is possible to leverage structured sparsity models to prevent highly coherent dictionary elements from appearing simultaneously in a signal representation, alleviating these coherence issues. However, the resulting approaches depend heavily on a careful setting of the maximum allowable coherence; furthermore, their guarantees apply to the coefficient vector recovery and do not translate in general to the parameter estimation task. We propose a new algorithm based on optimal sparse approximation measured by earth mover's distance (EMD). We show that EMD provides a better-suited metric for the performance of parametric dictionary-based parameter estimation. We leverage If-median clustering algorithms to solve the EMD-optimal sparse approximation problem, and show that the resulting compressive parameter estimation algorithms provide satisfactory performance without requiring control of dictionary coherence.
机译:近年来,稀疏性和压缩感应引起了参数估计任务的显着关注,包括频率估计,延迟估计和定位。参数词典收集参数空间采样的观察,并且当采样足够密集时,可以为感兴趣的信号产生稀疏表示。虽然这种致密采样可以导致字典中的高相干性,但是可以利用结构化的稀疏模型来防止高度相干的字典元素在信号表示中同时出现,减轻了这些相干问题。然而,由此产生的方法严重依赖于仔细设置最大允许的连贯性;此外,它们的保证适用于系数矢量恢复,并且不会一般地转换到参数估计任务。我们提出了一种基于地球移动器距离(EMD)测量的最佳稀疏近似的新算法。我们表明EMD为基于参数字典的参数估计的性能提供了更好的度量标准。我们利用IF中位聚类算法来解决EMD - 最佳稀疏近似问题,并表明所得到的压缩参数估计算法提供令人满意的性能而不需要控制字典连贯性。

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