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Accuracy Analysis of Feature-based Automatic Modulation Classification with Blind Modulation Detection

机译:盲调制检测的基于特征的自动调制分类精度分析

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The process of automatic classification of a detected signal's employed modulation type has gained importance in recent years. The goal of such an approach is to maximize the achievable throughput for intelligent receiver designs in civilian applications as well as jamming malicious signals in military applications. Automatic Modulation Classification (AMC) increases in difficulty since there is no a-priori knowledge of transmitted signal properties, such as signal power, carrier frequency, or bandwidth, nor any associated link properties such as channel state information (CSI), noise characteristics, signal-to-noise ratio (SNR) or any offset in frequency and phase. The most complex, albeit also most realistic, scenarios for AMC are faced when considering Non-Gaussian noise with multipath fading in frequency selective and time-varying channels. Different methods have been proposed in the literature to estimate unknown signals and channel parameters for AMC. However, a key consideration in selecting among them is attaining low computational complexity in order for AMC to become a technique feasible for real-time applications. Predominantly, blind AMC and associated parameter estimation utilizes feature-based approaches, owing to their low-complexity calculations of statistical values. In this work, we have analyzed the accuracy of High-order Statistics-based (HoS) methods utilizing feature extraction approaches, Support Vector Machine classifiers, and estimation techniques to determine an optimized framework for different real-time applications.
机译:近年来,对检测信号所采用的调制类型进行自动分类的过程变得越来越重要。这种方法的目的是使民用应用中的智能接收器设计以及军事应用中的恶意信号阻塞达到最大的吞吐量。自动调制分类(AMC)的难度增加,因为没有先验知识来了解传输的信号属性(例如信号功率,载波频率或带宽),也没有任何关联的链路属性(例如信道状态信息(CSI),噪声特征,信噪比(SNR)或频率和相位的任何偏移。当考虑频率选择和时变信道中具有多径衰落的非高斯噪声时,AMC面临着最复杂,尽管也是最现实的情况。文献中已经提出了不同的方法来估计AMC的未知信号和信道参数。但是,从中进行选择的关键考虑因素是要使AMC成为实时应用可行的技术,并且要获得较低的计算复杂度。由于它们的统计值计算复杂度低,因此主要是盲AMC和相关参数估计使用基于特征的方法。在这项工作中,我们使用特征提取方法,支持向量机分类器和估算技术来分析基于高阶统计量(HoS)的方法的准确性,以确定针对不同实时应用的优化框架。

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