Optimization of Bipolar Toeplitz Measurement Matrix Based on Cosine-Exponential Chaotic Map and Improved Abolghasemi Algorithm

IF 0.5 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Radioengineering Pub Date : 2023-12-01 DOI:10.13164/re.2023.0583
S. Meng, C. Meng, C. Wang, Q. Wang
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引用次数: 0

Abstract

. In compressive sensing theory, the measurement matrix plays a crucial role in compressive observation of sparse signals. The bipolar Toeplitz measurement matrix constructed based on chaotic map has advantages such as generating fewer free elements and supporting fast algorithms, making it widely used. While optimizing the measurement matrix can effectively improve its compressive sensing reconstruction performance, existing optimization algorithms are not suitable for the bipolar Toeplitz measurement matrix due to its structural and bipolar properties. To address this issue, this paper proposes an optimization method for the bipolar Toeplitz measurement matrix based on cosine-exponential (CE) chaotic map sequences and an improved Abolghasemi algorithm. Using an enhanced CE chaotic map to generate chaotic sequences with greater chaos and randomness, we construct the measurement matrix and optimize it using the structure matrix and the improved Abolghasemi algorithm, which preserves the matrix's bipolarity without altering its structure. We also introduce constraints on the generated sequence values during the optimization process. Through simulation experiments, the effectiveness of our optimization algorithm is verified, as the optimized bipolar Toeplitz measurement matrix significantly reduces reconstruction error and improves reconstruction probability.
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基于余弦-指数混沌图和改进型 Abolghasemi 算法的双极 Toeplitz 测量矩阵优化
. 在压缩感知理论中,测量矩阵在稀疏信号的压缩观测中起着至关重要的作用。基于混沌映射构造的双极Toeplitz测量矩阵具有生成自由元素少、支持快速算法等优点,得到了广泛的应用。虽然对测量矩阵进行优化可以有效提高其压缩感知重构性能,但由于双极Toeplitz测量矩阵的结构和双极特性,现有的优化算法并不适用于双极Toeplitz测量矩阵。针对这一问题,本文提出了一种基于余弦指数混沌映射序列和改进Abolghasemi算法的双极Toeplitz测量矩阵优化方法。利用增强的CE混沌映射生成具有更大混沌性和随机性的混沌序列,构建测量矩阵并利用结构矩阵和改进的Abolghasemi算法对其进行优化,在不改变矩阵结构的前提下保持矩阵的双极性。在优化过程中,我们还引入了对生成序列值的约束。仿真实验验证了优化算法的有效性,优化后的双极Toeplitz测量矩阵显著降低了重构误差,提高了重构概率。
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来源期刊
Radioengineering
Radioengineering 工程技术-工程:电子与电气
CiteScore
2.00
自引率
9.10%
发文量
0
审稿时长
5.7 months
期刊介绍: Since 1992, the Radioengineering Journal has been publishing original scientific and engineering papers from the area of wireless communication and application of wireless technologies. The submitted papers are expected to deal with electromagnetics (antennas, propagation, microwaves), signals, circuits, optics and related fields. Each issue of the Radioengineering Journal is started by a feature article. Feature articles are organized by members of the Editorial Board to present the latest development in the selected areas of radio engineering. The Radioengineering Journal makes a maximum effort to publish submitted papers as quickly as possible. The first round of reviews should be completed within two months. Then, authors are expected to improve their manuscript within one month. If substantial changes are recommended and further reviews are requested by the reviewers, the publication time is prolonged.
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