基于压缩感知方法的无线信号重构与分类

A. Draganic, I. Orović, S. Stankovic, Xiumei Li, Zhi Wang
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引用次数: 4

摘要

本文提出了通过通信信道传输的随机欠采样信号的分类和重构方法。本研究的重点是工作在同一频带内且可能相互干扰的无线通信信号。在第一阶段,通过应用特征值分解的概念对信号成分进行分离。其次,压缩感知方法用于减少传输样本的数量,并在传输时提供准确的信号重建。最后一步,通过观察重构分离分量的时频特性进行分类。实验结果证明了这一理论的正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction and classification of wireless signals based on compressive sensing approach
The procedure for the classification and reconstruction of randomly under-sampled signals transmitted through the communication channel, is proposed in this paper. The focus of this work is on the wireless communication signals that operate in the same frequency band and may interfere with each other. In the first stage, the separation of signal components is done by applying the concept of eigenvalue decomposition. Next, the compressive sensing approach is used to reduce the number of transmitted samples and to provide accurate signal reconstruction upon transmission. In the last step, the classification is done by observing the time-frequency characteristics of reconstructed separated components. The theory is proved by the experimental results.
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