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Compressed Sensing with Linear Correlation Between Signal and Measurement Noise

机译:信号与测量噪声之间线性相关的压缩感知

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摘要

Existing convex relaxation-based approaches to reconstruction in compressed sensing assume that noise in the measurements is independent of the signal of interest. We consider the case of noise being linearly correlated with the signal and introduce a simple technique for improving compressed sensing reconstruction from such measurements. The technique is based on a linear model of the correlation of additive noise with the signal. The modification of the reconstruction algorithm based on this model is very simple and has negligible additional computational cost compared to standard reconstruction algorithms, but is not known in existing literature. The proposed technique reduces reconstruction error considerably in the case of linearly correlated measurements and noise. Numerical experiments confirm the efficacy of the technique. The technique is demonstrated with application to low-rate quantization of compressed measurements, which is known to introduce correlated noise, and improvements in reconstruction error compared to ordinary Basis Pursuit De-Noising of up to approximately 7 dB are observed for 1 bit/sample quantization. Furthermore, the proposed method is compared to Binary Iterative Hard Thresholding which it is demonstrated to outperform in terms of reconstruction error for sparse signals with a number of non-zero coefficients greater than approximately 1⁄10th of the number of compressed measurements.
机译:现有的基于凸弛豫的压缩感测重建方法假设测量中的噪声与目标信号无关。我们考虑了噪声与信号线性相关的情况,并介绍了一种从此类测量中改善压缩感测重建的简单技术。该技术基于附加噪声与信号的相关性的线性模型。与标准的重建算法相比,基于此模型的重建算法的修改非常简单,并且额外的计算成本可忽略不计,但是在现有文献中尚不清楚。所提出的技术在线性相关的测量和噪声的情况下大大降低了重建误差。数值实验证实了该技术的有效性。该技术已证明可应用于压缩测量的低速率量化,已知会引入相关噪声,并且与普通的基本追踪相比,重构误差有所改善,对于1位/样本量化,观察到的去噪高达约7 dB。 。此外,将所提出的方法与二进制迭代硬阈值进行了比较,该方法证明在稀疏信号的重构误差方面表现优异,该稀疏信号的非零系数数量大于压缩测量数量的大约1⁄10。

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