An Effective Radio Frequency Signal Classification Method Based on Multi-Task Learning Mechanism

Hongzhi Liu, Chengyao Hao, Yang Peng, Yu Wang, T. Ohtsuki, Guan Gui
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引用次数: 1

Abstract

With the increasing popularity of Internet of things (IoT), the emergence of many IoT devices has led to security vulnerabilities. The classification of wireless signals is very important for secure communications. Most of existing signal classification tasks only focus on single signal classification task, while ignoring the relationship between radio frequency fingerprinting identification (RFFI) and automatic modulation classification (AMC). To solve the multi-task classification problem, this paper designs a multi-task learning convolutional neural networks (MTL-CNN). Real-radio datasets are generated by Signal Hound VSG60A and collected by Signal Hound BB60C to solve the lack of RFF samples with numerous modulation types. Experimental results confirm that the MTL-CNN method can work well by using the generated dataset. The MTL network designed in this paper improves the accuracy of RFFI by 1xs% relative to the single-task learning (STL) network. The keras code is released at https://github.comLiuK1288/1hw-000.
一种基于多任务学习机制的射频信号分类方法
随着物联网(IoT)的日益普及,许多物联网设备的出现导致了安全漏洞。无线信号的分类对安全通信非常重要。现有的信号分类任务大多只关注单个信号分类任务,而忽略了射频指纹识别(RFFI)与自动调制分类(AMC)之间的关系。为了解决多任务分类问题,本文设计了一个多任务学习卷积神经网络(MTL-CNN)。实际无线电数据集由Signal Hound VSG60A生成,由Signal Hound BB60C采集,解决了RFF样本缺乏且调制类型众多的问题。实验结果表明,利用生成的数据集,MTL-CNN方法可以很好地工作。与单任务学习(STL)网络相比,本文设计的MTL网络将RFFI的准确率提高了1xs%。keras代码在https://github.comLiuK1288/1hw-000上发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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