Theoretical analysis for ℓ1-ℓ2 minimization with partial support information

IF 0.6 4区 数学 Q4 MATHEMATICS, APPLIED
Haifeng Li, Leiyan Guo
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引用次数: 0

Abstract

We investigate the recovery of k-sparse signals using the 1-2 minimization model with prior support set information. The prior support set information, which is believed to contain the indices of nonzero signal elements, significantly enhances the performance of compressive recovery by improving accuracy, efficiency, reducing complexity, expanding applicability, and enhancing robustness. We assume k-sparse signals x with the prior support T which is composed of g true indices and b wrong indices, i.e., ∣T∣ = g+bk. First, we derive a new condition based on RIP of order 2α (α = k − g) to guarantee signal recovery via 1-2 minimization with partial support information. Second, we also derive the high order RIP with for some t ⩾ 3 to guarantee signal recovery via 1-2 minimization with partial support information.

具有部分支持信息的1- 2最小化的理论分析
我们利用具有先验支持集信息的最小化模型研究了k-稀疏信号的恢复。先验支持集信息被认为包含了非零信号元素的指标,通过提高精度、效率、降低复杂性、扩大适用性和增强鲁棒性,显著提高了压缩恢复的性能。假设k个稀疏信号x具有由g个真指标和b个错指标组成的先验支持T,即∣T∣= g+b≤k。首先,我们推导了一个基于2α阶RIP (α = k−g)的新条件,以保证信号在部分支持信息下通过1- 2最小化实现恢复。其次,我们还为一些t大于或等于3的人导出具有tα的高阶RIP,以通过具有部分支持信息的1- 2最小化来保证信号恢复。
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来源期刊
Applications of Mathematics
Applications of Mathematics 数学-应用数学
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
3.0 months
期刊介绍: Applications of Mathematics publishes original high quality research papers that are directed towards applications of mathematical methods in various branches of science and engineering. The main topics covered include: - Mechanics of Solids; - Fluid Mechanics; - Electrical Engineering; - Solutions of Differential and Integral Equations; - Mathematical Physics; - Optimization; - Probability Mathematical Statistics. The journal is of interest to a wide audience of mathematicians, scientists and engineers concerned with the development of scientific computing, mathematical statistics and applicable mathematics in general.
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