压缩感知中的流测量:1滤波

M. Salman Asif, J. Romberg
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引用次数: 23

摘要

压缩感知中信号恢复的核心框架是lscr1范数最小化。近年来,在执行lscr1范数最小化的算法上取得了巨大的进展,这些算法通常基于某种梯度下降或牛顿迭代。然而,这些算法在很大程度上是缺乏统计学的:它们专注于为一组固定的测量值找到解决方案。在本文中,我们将提出一种方法,用于在添加新测量值时快速更新一些lscr1范数最小化问题的解决方案。结果是一个ldquolscr1滤波器,可以使用数值线性代数的标准技术实现。我们提出的方案是基于同伦的,我们在系统中添加新的测量值,而不是直接解决更新的问题,我们解决一系列简单(易于解决)的中间问题,从而导致期望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Streaming measurements in compressive sensing: ℓ1 filtering
The central framework for signal recovery in compressive sensing is lscr1 norm minimization. In recent years, tremendous progress has been made on algorithms, typically based on some kind of gradient descent or Newton iterations, for performing lscr1 norm minimization. These algorithms, however, are for the most part ldquostaticrdquo: they focus on finding the solution for a fixed set of measurements. In this paper, we will present a method for quickly updating the solution to some lscr1 norm minimization problems as new measurements are added. The result is an ldquolscr1 filterrdquo and can be implemented using standard techniques from numerical linear algebra. Our proposed scheme is homotopy based where we add new measurements in the system and instead of solving updated problem directly, we solve a series of simple (easy to solve) intermediate problems which lead to the desired solution.
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