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Adaptively-Regularized Compressive Sensing With Sparsity Bound Learning

机译:具有稀疏束缚学习的自适应 - 正规压缩传感

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摘要

In this letter, an adaptively-regularized iterative reweighted least squares algorithm with sparsity bound learning is designed to efficiently recover sparse signals from measurements. In particular, at each iteration the support of estimated signal is exploited to construct a sparsity-promoting matrix and, then, formulate an adaptive regularization. Since this algorithm could learn sparsity information at each iteration, it ensures a sparser and sparser solution, and the mean squared error analysis corroborates its convergence. Experimental results demonstrate that the proposed algorithm outperforms other typical ones in terms of sparsity level, compressive ratio, and detection probability.
机译:在这封信中,具有稀疏性束缚学习的自适应定期迭代重新分支最小二乘算法旨在有效地从测量中恢复稀疏信号。特别地,在每次迭代时,利用估计信号的支持以构建稀疏性促进矩阵,然后,配制自适应正规化。由于该算法可以在每次迭代时学习稀疏信息,因此它确保了稀疏和稀疏解决方案,并且平均平方误差分析证实了其收敛性。实验结果表明,在稀疏性水平,压缩比率和检测概率方面,所提出的算法优于其他典型的算法。

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