识别压缩感知中的不良测量

H. Kung, Tsung-Han Lin, D. Vlah
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引用次数: 12

摘要

研究了压缩感知中不良测量的识别问题。由于恶意攻击和系统故障,可能会出现这些错误的度量。由于压缩感知中的线性方程组是欠约束的,由这些不良测量引入的误差可能导致解码解的巨大变化。我们描述了识别不良测量的方法,以便在解码之前将其删除。在一种新的基于分离的方法中,我们通过排序分离出最重要的非零变量,从方程组中消除剩余的变量,然后解决简化的过约束问题来识别不良测量。与先前基于直接或联合最小化的方法相比,基于分离的方法可以在更少的测量次数下工作。在分析该方法时,我们引入了控制大非零变量可分性的反转概念。
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Identifying bad measurements in compressive sensing
We consider the problem of identifying bad measurements in compressive sensing. These bad measurements can be present due to malicious attacks and system malfunction. Since the system of linear equations in compressive sensing is underconstrained, errors introduced by these bad measurements can result in large changes in decoded solutions. We describe methods for identifying bad measurements so that they can be removed before decoding. In a new separation-based method we separate out top nonzero variables by ranking, eliminate the remaining variables from the system of equations, and then solve the reduced overconstrained problem to identify bad measurements. Comparing to prior methods based on direct or joint ℓ1-minimization, the separation-based method can work under a much smaller number of measurements. In analyzing the method we introduce the notion of inversions which governs the separability of large nonzero variables.
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