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首页> 外文期刊>IEEE Transactions on Signal Processing >On Projection Matrix Optimization for Compressive Sensing Systems
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On Projection Matrix Optimization for Compressive Sensing Systems

机译:压缩传感系统的投影矩阵优化

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摘要

This paper considers the problem of designing the projection matrix Φ for a compressive sensing (CS) system in which the dictionary Ψ is assumed to be given. The optimal projection matrix design is formulated in terms of finding those Φ such that the Frobenius norm of the difference between the Gram matrix of the equivalent dictionary ΦΨ and the identity matrix is minimized. A class of the solutions is derived in a closed-form, which is a generalization of the existing results. More interestingly, it is revealed that this solution set is characterized by an arbitrary orthonormal matrix. This freedom is then used to further enhance the performance of the CS system by minimizing the coherence between the atoms of the equivalent dictionary. An alternating minimization-based algorithm is proposed for solving the corresponding minimization problem. Experiments are carried out and simulations show that the projection matrix obtained by the proposed approach significantly improves the signal recovery accuracy of the CS system and outperforms those by existing algorithms.
机译:本文考虑了为假设有字典。的压缩感测(CS)系统设计投影矩阵Φ的问题。最佳投影矩阵设计是根据找到那些Φ来制定的,以使等效字典ΦΨ的Gram矩阵与恒等矩阵之间的差的Frobenius范数最小。一类解决方案以封闭形式导出,这是对现有结果的概括。更有趣的是,该解集的特征在于任意正​​交矩阵。然后通过最小化等效字典原子之间的相干性,将这种自由度用于进一步增强CS系统的性能。提出了一种基于交替最小化的算法来解决相应的最小化问题。实验和仿真表明,该方法获得的投影矩阵显着提高了CS系统的信号恢复精度,并优于现有算法。

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