论文标题

通过LSTM自动编码器实时无线电技术和调制分类

Real-Time Radio Technology and Modulation Classification via an LSTM Auto-Encoder

论文作者

Ke, Ziqi, Vikalo, Haris

论文摘要

基于检测到的无线电信号的通信技术和/或调制方案的识别是在各种应用程序中遇到的挑战性问题,包括频谱分配和无线电干扰缓解。由于越来越多的发射极类型以及现实世界通道对无线电信号的不同影响,它们变得困难。现有的频谱监视技术能够使用部署在各种设置中的紧凑型传感器来获取大量的无线电和实时频谱数据。但是,使用此类数据来对发射极类型进行分类和检测通信方案的最新方法难以在计算效率上达到所需的准确性水平,以使其在低成本计算平台上实施。在本文中,我们介绍了一个基于LSTM DeNoing自动编码器的学习框架,该自动编码器旨在自动从嘈杂的无线电信号中提取稳定且可靠的功能,并使用学习的功能推断调制或技术类型。该算法利用了在低成本计算平台上易于实现的紧凑神经网络体系结构,同时超出了最先进的精度。关于现实的合成以及空中无线电数据的结果表明,所提出的框架可靠,有效地对接收的无线电信号进行了分类,通常表明与最先进的方法相比,性能卓越。

Identification of the type of communication technology and/or modulation scheme based on detected radio signal are challenging problems encountered in a variety of applications including spectrum allocation and radio interference mitigation. They are rendered difficult due to a growing number of emitter types and varied effects of real-world channels upon the radio signal. Existing spectrum monitoring techniques are capable of acquiring massive amounts of radio and real-time spectrum data using compact sensors deployed in a variety of settings. However, state-of-the-art methods that use such data to classify emitter types and detect communication schemes struggle to achieve required levels of accuracy at a computational efficiency that would allow their implementation on low-cost computational platforms. In this paper, we present a learning framework based on an LSTM denoising auto-encoder designed to automatically extract stable and robust features from noisy radio signals, and infer modulation or technology type using the learned features. The algorithm utilizes a compact neural network architecture readily implemented on a low-cost computational platform while exceeding state-of-the-art accuracy. Results on realistic synthetic as well as over-the-air radio data demonstrate that the proposed framework reliably and efficiently classifies received radio signals, often demonstrating superior performance compared to state-of-the-art methods.

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