An lp-based reconstruction algorithm for compressed sensing radar imaging

Le Zheng, A. Maleki, Q. Liu, Xiaodong Wang, Xiaopeng Yang
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引用次数: 5

Abstract

Radar scientists have recently explored the application of compressed sensing for generating high resolution range profiles (HRRPs) from a limited number of measurements. The last decade has witnessed a surge of algorithms for this purpose. Among these algorithms complex-valued approximate message passing (CAMP) has attracted attention for the following reasons: (i) it converges very fast, (ii) its mean-squared-error can be accurately predicted theoretically at every iteration, (iii) it is straightforward to control the false alarm rate and optimize for the best probability of detection. Despite its nice features, the recovery performance of CAMP is similar to ℓ1-minimization and hence is expected to be improved. The goal of this paper is to first show how the algorithm can be extended to solve non-convex optimization problems. Based on our framework we develop a new algorithm called adaptive ℓp-CAMP that not only has all the nice properties of CAMP, but also provably outperforms it. We explore the performance of our algorithm on a real radar data and show that our new algorithm generates SNRs that are up to 6dB better than those of the other existing algorithms including the original CAMP.
一种基于lp的压缩感知雷达图像重构算法
雷达科学家最近探索了压缩感知的应用,从有限的测量数据中生成高分辨率距离剖面(hrrp)。在过去的十年里,这方面的算法激增。在这些算法中,复值近似消息传递算法(complex-value approximate message passing, CAMP)受到关注的原因有:(1)其收敛速度非常快,(2)其均方误差在每次迭代中都可以从理论上得到准确的预测,(3)其可以直接控制误报率并优化到最佳检测概率。尽管它有很好的特性,但是CAMP的恢复性能与最小化相似,因此有望得到改进。本文的目的是首先展示如何将该算法扩展到解决非凸优化问题。基于我们的框架,我们开发了一种新的算法,称为自适应p-CAMP,它不仅具有CAMP的所有优良特性,而且可以证明优于CAMP。我们在真实雷达数据上探索了我们的算法的性能,并表明我们的新算法比其他现有算法(包括原始CAMP)产生的信噪比高出6dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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