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Fast reconstruction algorithm for perturbed compressive sensing based on total least-squares and proximal splitting

机译:基于总最小二乘和近邻分裂的摄动压缩感知快速重建算法

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摘要

We consider the problem of finding a sparse solution for an underdetermined linear system of equations when the known parameters on both sides of the system are subject to perturbation. This problem is particularly relevant to reconstruction in fully-perturbed compressive-sensing setups where both the projected measurements of an unknown sparse vector and the knowledge of the associated projection matrix are perturbed due to noise, error, mismatch, etc. We propose a new iterative algorithm for tackling this problem. The proposed algorithm utilizes the proximal-gradient method to find a sparse total least-squares solution by minimizing an ℓ_1-regularized Rayleigh-quotient cost function. We determine the step-size of the algorithm at each iteration using an adaptive rule accompanied by backtracking line search to improve the algorithm's convergence speed and preserve its stability. The proposed algorithm is considerably faster than a popular previously-proposed algorithm, which employs the alternating-direction method and coordinate-descent iterations, as it requires significantly fewer computations to deliver the same accuracy. We demonstrate the effectiveness of the proposed algorithm via simulation results.
机译:当系统两端的已知参数都受到扰动时,我们考虑为方程组欠定的线性系统找到稀疏解的问题。这个问题与完全扰动的压缩感测设置中的重建特别相关,在这种情况下,未知稀疏矢量的投影测量值和相关投影矩阵的知识都会由于噪声,误差,失配等而受到干扰。我们提出了一种新的迭代方法解决此问题的算法。所提出的算法通过最小化reg_1正则化瑞利商成本函数,利用近端梯度法找到稀疏的总最小二乘解。我们使用自适应规则以及回溯线搜索来确定每次迭代的算法步长,以提高算法的收敛速度并保持其稳定性。所提出的算法比流行的先前提出的算法要快得多,后者采用交替方向方法和坐标下降迭代,因为它只需很少的计算就能达到相同的精度。我们通过仿真结果证明了该算法的有效性。

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