广义追基去量化的相干恢复保证

G. Pope, Christoph Studer, M. Baes
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引用次数: 5

摘要

本文讨论了在某些已知字典(可能是过完备的)中承认近似稀疏表示并被加性噪声破坏的信号的恢复问题。特别地,当p≥2时,我们考虑具有有界的p-范数的加性测量噪声,并最小化信号向量的q准范数(其中q∈(0,1]))。我们开发了基于相干的恢复保证,其中通过广义基追求去量化(BPDQp,q)可以实现稳定的恢复。我们最后表明,根据测量噪声模型和约束中使用的p-范数的选择,(BPDQp,q)显着优于经典的基追踪去噪(BPDN)。
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Coherence-based recovery guarantees for generalized basis-pursuit de-quantizing
This paper deals with the recovery of signals that admit an approximately sparse representation in some known dictionary (possibly over-complete) and are corrupted by additive noise. In particular, we consider additive measurement noise with bounded ℓp-norm for p ≥ 2, and we minimize the ℓq quasi-norm (with q ∈ (0, 1]) of the signal vector. We develop coherence-based recovery guarantees for which stable recovery via generalized basis-pursuit de-quantizing (BPDQp,q) is possible. We finally show that depending on the measurement-noise model and the choice of the ℓp-norm used in the constraint, (BPDQp,q) significantly outperforms classical basis pursuit de-noising (BPDN).
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