Background The construction of measurement matrix becomes a focus in compressed sensing (CS) theory. Altho'/> Sparse kronecker pascal measurement matrices for compressive imaging
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Sparse kronecker pascal measurement matrices for compressive imaging

机译:压缩成像的稀疏Kronecker Pascal测量矩阵

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Abstract Background The construction of measurement matrix becomes a focus in compressed sensing (CS) theory. Although random matrices have been theoretically and practically shown to reconstruct signals, it is still necessary to study the more promising deterministic measurement matrix. Methods In this paper, a new method to construct a simple and efficient deterministic measurement matrix, sparse kronecker pascal (SKP) measurement matrix, is proposed, which is based on the kronecker product and the pascal matrix. Results Simulation results show that the reconstruction performance of the SKP measurement matrices is superior to that of the random Gaussian measurement matrices and random Bernoulli measurement matrices. Conclusions The SKP measurement matrix can be applied to reconstruct high-dimensional signals such as natural images. And the reconstruction performance of the SKP measurement matrix with a proper pascal matrix outperforms the random measurement matrices.
机译: Abstract Background 构造测量矩阵成为压缩传感(CS)理论的重点。尽管在理论上和实践上已经显示出随机矩阵可以重建信号,但是仍然有必要研究更有希望的确定性测量矩阵。 Methods 本文提出了一种基于kronecker乘积和pascal矩阵的构造简单有效的确定性测量矩阵的新方法,即稀疏kronecker pascal(SKP)测量矩阵。 / Para> 结果 仿真结果表明,SKP测量矩阵的重建性能优于随机变量高斯度量矩阵和随机伯努利度量矩阵。 结论 可以将SKP测量矩阵用于重构高维信号,例如自然 图片。具有适当Pascal矩阵的SKP测量矩阵的重建性能优于随机测量矩阵。

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