增强特定发射器识别:深云和宽边缘集成的半监督方法

IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS IEEE Transactions on Information Forensics and Security Pub Date : 2024-12-30 DOI:10.1109/TIFS.2024.3524157
Yibin Zhang;Yuchao Liu;Juzhen Wang;Qi Xuan;Yun Lin;Guan Gui
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引用次数: 0

摘要

特定发射器识别(SEI)在万物互联(IoE)中至关重要。在过去的十年中,深度学习(DL)和广泛学习(BL)支持的SEI技术已经出现。基于DL和bl的SEI方法都依赖于大量的射频(RF)信号样本和相应的标签,但是标记未知信号是一项相当大的开销和昂贵的任务。因此,许多研究人员已经开始探索半监督学习技术,以解决有限标记射频信号的半监督SEI (SS-SEI)问题。然而,现有的SS-SEI解决方案通常优先考虑识别性能,导致高计算开销,缺乏可迭代性和可伸缩性。为了克服这些挑战,本文提出了一种新的SS-SEI解决方案,称为深云和宽边缘(DCBE)。这种方法将云服务器上基于dl的SEI方法与边缘节点上可更新的基于bl的SEI方法集成在一起。最初,使用云服务器上标记的历史数据训练几个基于dl的SEI模型。同时,在边缘节点局部部署可更新的基于bl的SEI方法来识别未标记的信号。当DCBE解决方案运行时,边缘节点捕获实时未标记的RF信号。基于预训练dl的SEI方法和基于局部bl的SEI方法共同识别这些射频信号。识别结果与新的实时射频信号一起用于更新边缘节点上基于bl的SEI方法的权重。DCBE SS-SEI解决方案使用开源、大规模、真实世界的自动相关监视广播(ADS-B)数据集进行验证。实验结果表明,提出的DCBE解决方案在SS-SEI性能方面具有显著优势,在不依赖GPU的情况下降低了计算开销,并且在复杂环境下具有系统鲁棒性。
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Enhancing Specific Emitter Identification: A Semi-Supervised Approach With Deep Cloud and Broad Edge Integration
Specific emitter identification (SEI) is crucial in the Internet of Everything (IoE). Over the past decade, deep learning (DL) and broad learning (BL)-enabled SEI technologies have emerged. Both DL- and BL-based SEI methods rely on extensive radio frequency (RF) signal samples and corresponding labels, but labeling unknown signals is a considerable overhead and costly task. Consequently, many researchers have begun exploring semi-supervised learning techniques to address the semi-supervised SEI (SS-SEI) problem with limited labeled RF signals. However, existing SS-SEI solutions often prioritize identification performance, leading to high computational overheads and lacking iterability and scalability. To overcome these challenges, this paper proposes a novel SS-SEI solution, termed deep cloud and broad edge (DCBE). This approach integrates a DL-based SEI method at the cloud server with an updatable BL-based SEI method at the edge node. Initially, several DL-based SEI models are trained using labeled historical data at the cloud server. Meanwhile, an updatable BL-based SEI method is deployed locally on the edge node to identify unlabelled signals. When the DCBE solution is operational, edge nodes capture real-time unlabelled RF signals. The pre-trained DL-based SEI method and the locally BL-based SEI method jointly identify these RF signals. The identification results, along with the new real-time RF signals, are then used to update the weights of the BL-based SEI method at the edge nodes. The DCBE SS-SEI solution is validated using an open-source, large-scale, real-world automatic dependent surveillance-broadcast (ADS-B) dataset. Experimental results demonstrate that the proposed DCBE solution offers significant advantages in terms of SS-SEI performance, reduced computational overhead without GPU dependency, and system robustness in complex environments.
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来源期刊
IEEE Transactions on Information Forensics and Security
IEEE Transactions on Information Forensics and Security 工程技术-工程:电子与电气
CiteScore
14.40
自引率
7.40%
发文量
234
审稿时长
6.5 months
期刊介绍: The IEEE Transactions on Information Forensics and Security covers the sciences, technologies, and applications relating to information forensics, information security, biometrics, surveillance and systems applications that incorporate these features
期刊最新文献
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