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Compressed Sensing of Complex Sinusoids: An Approach Based on Dictionary Refinement

机译:复杂正弦信号的压缩感知:基于字典优化的方法

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摘要

In the existing compressed sensing (CS) theory, the accurate reconstruction of an unknown signal lies in the awareness of its sparsifying dictionary. For the signal represented by a finite sum of complex sinusoids, however, it is impractical to set a fixed sparsifying Fourier dictionary prior to signal reconstruction due to our ignorance of the signal's component frequencies. To address this, we model the sparsifying Fourier dictionary as a parameterized dictionary, with the sampled frequency grid points treated as the underlying parameters. Consequently, the sparsifying dictionary is refinable during the signal reconstruction process, and its refinement can be accomplished via the adjustment of the frequency grid. Furthermore, based on the philosophy of the variational expectation-maximization (EM) algorithm, we develop a novel recovery algorithm for CS of complex sinusoids. The algorithm achieves joint sparse representation recovery and sparsifying dictionary refinement by successively executing steps of signal coefficients estimation and dictionary parameters optimization. Simulation results under different conditions demonstrate that compared to the state-of-the-art CS recovery methods, the proposed algorithm achieves much higher signal reconstruction accuracy, and yields superior performance both in suppressing additive noise in measurements and in reconstructing signals with closely-spaced component frequencies.
机译:在现有的压缩感测(CS)理论中,未知信号的准确重建在于其稀疏字典的意识。然而,对于由复数正弦波的有限和表示的信号,由于我们对信号分量频率的无知,在信号重构之前设置固定的稀疏傅里叶字典是不切实际的。为了解决这个问题,我们将稀疏傅里叶字典建模为参数化字典,并将采样的频率网格点作为基础参数。因此,稀疏字典在信号重建过程中是可改进的,并且其精细化可以通过调整频率网格来实现。此外,基于变分期望最大化(EM)算法的原理,我们针对复杂正弦波的CS开发了一种新颖的恢复算法。该算法通过依次执行信号系数估计和字典参数优化的步骤,实现了联合的稀疏表示恢复和稀疏的字典细化。在不同条件下的仿真结果表明,与最新的CS恢复方法相比,该算法具有更高的信号重建精度,并且在抑制测量中的加性噪声​​以及在间隔较近的信号重建中均具有出色的性能。分量频率。

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