基于压缩感知的便携式监视雷达距离检测与多普勒估计

V. Chandrakanth, S. Merchant
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引用次数: 2

摘要

压缩感知是一种利用随机线性非自适应测量来处理欠采样稀疏或可压缩信号的新技术。在稀疏性约束下,它允许使用最小l1范数重建方法以小误差或零误差重建数据。由于大多数现实世界的数据要么是稀疏的,要么在一些合适的基础上是可压缩的,因此所提出的方法立即在成像系统、MRI、雷达系统等各个领域得到了应用。但文献中考虑的大多数应用都是处理真实数据的。对于雷达应用来说,数据是复杂的,需要考虑适当的修正。本文提出了一种压缩感知技术在便携式雷达信号处理器中的应用。该方法可以在高度减少输入数据量的情况下精确地检测目标的距离和多普勒。由于多普勒信息在信号向低维变换过程中被破坏,我们采用并行处理信道来估计多普勒信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressed sensing based range detection and Doppler estimation for portable surveillance radar
Compressed sensing is a novel technique of under sampling sparse or compressible signals using random linear non adaptive measurements. Under the sparsity constraints it allows for reconstruction of the data with small or zero error using minimum l1 norm reconstruction methods. Since most of the real world data are either sparse or compressible in some suitable basis, the proposed method has immediately found application in varied fields like imaging systems, MRI, Radar systems etc. But most of the applications considered in literature deal with real data. For radar applications the data is complex and suitable amendments for processing are considered. In this paper we proposed an application of compressed sensing towards portable radar signal processor. We have used the method to accurately detect target's range and doppler with highly reduced quantum of input data. Since the doppler information is corrupted during the signal transformation to lower dimension we have used a parallel processing channel for estimating the doppler information.
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