压缩感知:稀疏恢复算法的性能比较

Youness Arjoune, N. Kaabouch, Hassan El Ghazi, A. Tamtaoui
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引用次数: 89

摘要

频谱感知是认知无线电中的一个重要过程。频谱传感技术具有处理时间长、硬件成本高、计算复杂度高等缺点。为了解决这些问题,压缩感知被提出,以减少处理时间和加快扫描过程的无线电频谱。选择合适的稀疏恢复算法是实现这一目标的必要条件。本文对这些稀疏恢复算法进行了深入的研究,对它们进行了分类,并对它们的性能进行了比较。实现了6种不同类别的算法,并对其性能进行了比较。作为比较指标,我们使用了恢复误差、恢复时间、协方差和相变图。结果表明,贪心类技术的恢复速度更快,凸类和松弛类技术在恢复误差方面表现更好,基于贝叶斯的技术具有恢复误差小和恢复时间短的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressive sensing: Performance comparison of sparse recovery algorithms
Spectrum sensing is an important process in cognitive radio. Spectrum sensing techniques suffer from high processing time, hardware cost, and computational complexity. To address these problems, compressive sensing has been proposed to decrease the processing time and expedite the scanning process of the radio spectrum. Selection of a suitable sparse recovery algorithm is necessary to achieve this goal. This paper provides a deep survey on these sparse recovery algorithms, classify them into categories, and compares their performances. Six algorithms from different categories were implemented and their performances compared. As comparison metrics, we used recovery error, recovery time, covariance, and phase transition diagram. The results show that techniques under Greedy category are faster, techniques of Convex and Relaxation category perform better in term of recovery error, and Bayesian based techniques are observed to have an advantageous balance of small recovery error and a short recovery time.
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