Reconstruction of Signals from their Blind Compressive Measurements

V. Narayanan, G. Abhilash
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引用次数: 2

Abstract

This paper proposes a method to reconstruct a signal from its Blind Compressive measurements by formulating it as a constrained optimization problem. It considers two objective functions; one function to recover the sparse representation coefficients and the other function to estimate the signal ensuring the consistency with the given compressed measurements. The sparsifying basis is learned from the reconstructed signals using a probability based transform learning algorithm. The reconstruction of the signal, and the learning of the sparsifying basis are performed using an alternating optimization strategy. The high-frequency artifacts on the reconstructed signal are circumvented by applying total variation minimization. The convergence of the proposed algorithm which uniquely reconstructs the signal up to a practically acceptable lower bound on the estimation error is also established.
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基于盲压缩测量的信号重构
本文提出了一种从信号的盲压缩测量中重构信号的方法,将其表述为一个约束优化问题。它考虑两个目标函数;一个函数用于恢复稀疏表示系数,另一个函数用于估计信号,以确保与给定压缩测量值的一致性。利用基于概率的变换学习算法从重构信号中学习稀疏基。使用交替优化策略进行信号重建和稀疏基学习。利用总变差最小化的方法避免了重构信号上的高频伪影。本文还证明了该算法的收敛性,该算法可以唯一地重建信号,直至估计误差的实际可接受的下界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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