基于凸规划的信号采样和数据压缩重构压缩感知技术的仿真与分析

A. N. Cadavid, Mario Ramos
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引用次数: 2

摘要

信息管理主要是在奈奎斯特的抽样理论下进行的,但引入新的理论来取代我们所知道的经典抽样理论的缺陷是很重要的。这些缺陷给数据获取带来困难;在处理大量信息时,除了存储和处理成本较高之外,这也是一个问题。本文介绍了压缩感知仿真技术应用于两类信号的仿真结果。本文的目的是应用压缩感知技术模拟一个涉及数据恢复的通信系统,分析采样率的降低,测量该过程的效率和技术的行为。利用凸规划和l1范数最小化方法对信号进行时域恢复。我们使用了L1Magic工具箱,这是一组Matlab®函数,用于解决本例中使用l1eqpd函数的优化问题。作为所获得结果的总结,我们检查了压缩感知技术的效率,采样构造信号的最小平均速率,以及与不可微信号相比,该技术恢复软信号的最佳性能。此外,通过改变采样率和检查信号的可听性,给出了压缩感知技术对音频信号的恢复结果。这允许在真实场景中测试该技术,以更有效的方式找到传输音频信号的好机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulation and analysis of compressed sensing technique as sampling and data compression and reconstruction of signals using convex programming
The information management has been treated primarily under the Nyquist sampling theory, but it is important to introduce new theories that replace deficiencies of what we know as the classical theory of sampling. These deficiencies create difficulties in data acquisition; this is a problem when large volumes of information are handled, in addition to the higher costs in storage and processing. This article presents the results obtained from the compressed sensing simulation technique applied to two types of signals. The aim of this paper was to simulate a communication system involving the data recovery applying the compressed sensing technique, analyzing sampling rates reduction, measuring the efficiency of the process and the behavior of the technique. The recovery of the signal is made using convex programming and using l1 norm minimization for recover the signals in the time domain. We used the L1Magic toolbox, which is a set of Matlab® functions used to solve optimization problems in this case with the l1eqpd function. As a summary of the obtained results, we checked the efficiency of the compressed sensing technique, minimum average rates for sampling the constructed signals, and the best performance of the technique to recover soft signals compared to non-differentiable signals. Additionally, the recovery results of an audio signal with the compressed sensing technique, by varying the sampling rate and checking the audibility of the signal, are presented. This allowed the testing of this technique in a real scenario, finding a good opportunity for the transmission of audio signals in a more efficient way.
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