基于特征的自动调制分类性能评价

Pejman Ghasemzadeh, Subharthi Banerjee, M. Hempel, H. Sharif
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引用次数: 17

摘要

自动调制分类(AMC)是智能接收机的重要组成部分。由于无线通信的快速发展,调制分类已成为设计高效、高性能接收机的关键因素。自动调制分类影响关键的民用和军事应用。在民用应用中,部署了各种形式的四元调制和16点调制(QASK, QFSK, QPSK, 16-QAM等)。对于这组调制,文献中提出的两种主要的AMC方法是似然(LB)和基于特征(FB)的分类。基于特征的方法侧重于五个主要属性:基于信号谱的特征、基于小波变换的特征、基于高阶统计量(HoS)的特征、基于循环平稳分析的特征和基于图的循环频谱分析特征,所有这些特征都被用来提取分类器的初始信息。在本文中,我们分析了应用于民用调制的各种特征的自动调制分类在实际场景下的性能。
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Performance Evaluation of Feature-based Automatic Modulation Classification
Automatic Modulation Classification (AMC) is a vital component for intelligent receivers. Due to the rapid growth of wireless communications, modulation classification has become a critical factor for efficient and high-performing receiver designs. Automatic modulation classification impacts critical civilian and military applications. In civilian applications, various forms of quaternary and 16-point modulations (QASK, QFSK, QPSK, 16-QAM, etc.) are deployed. For this group of modulations, the two dominant AMC approaches proposed in the literature are Likelihood- (LB) and Feature-based (FB) classification. Feature-based approaches focus on five main properties: Signal Spectral-based Features, Wavelet Transform-based Features, High-order Statistics-based (HoS) Features, Cyclostationary Analysis-based Features and Graph-based Cyclic-Spectrum Analysis Features, all of which are employed to extract initial information for the classifier. In this work, we analyze the performance of automatic modulation classification applied for civilian modulations with various features under practical scenarios.
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