Automatic modulation recognition for spectrum sensing using nonuniform compressive samples

Chia Wei Lim, M. Wakin
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引用次数: 31

Abstract

The theory of Compressive Sensing (CS) has enabled the efficient acquisition of high-bandwidth (but sparse) signals via nonuniform low-rate sampling protocols. While most work in CS has focused on reconstructing the high-bandwidth signals from nonuniform low-rate samples, in this work, we consider the task of inferring the modulation of a communications signal directly in the compressed domain, without requiring signal reconstruction. We show that the Nth power nonlinear features used for Automatic Modulation Recognition (AMR) are compressible in the Fourier domain, and hence, that AMR of M-ary Phase-Shift-Keying (MPSK) modulated signals is possible by applying the same nonlinear transformation on nonuniform compressive samples. We provide analytical support for the accurate approximation of AMR features from nonuniform samples, present practical rules for classification of modulation type using these samples, and validate our proposed rules on simulated data.
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基于非均匀压缩样本的频谱感知自动调制识别
压缩感知(CS)理论通过非均匀低速率采样协议实现了高带宽(但稀疏)信号的有效采集。虽然CS中的大多数工作都集中在从不均匀的低速率样本中重建高带宽信号,但在这项工作中,我们考虑了直接在压缩域中推断通信信号调制的任务,而不需要信号重建。我们证明了用于自动调制识别(AMR)的n次方非线性特征在傅里叶域中是可压缩的,因此,通过对非均匀压缩样本应用相同的非线性变换,M-ary相移键控(MPSK)调制信号的AMR是可能的。我们为从非均匀样本中精确逼近AMR特征提供了分析支持,提出了使用这些样本进行调制类型分类的实用规则,并在模拟数据上验证了我们提出的规则。
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