Diff-SwinT:用于雷达干扰识别的扩散模型与斯温变换器集成框架

IF 2.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Future Internet Pub Date : 2023-11-23 DOI:10.3390/fi15120374
Minghui Sha, Dewu Wang, Fei Meng, Wenyan Wang, Yu Han
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引用次数: 0

摘要

随着雷达干扰威胁的日益复杂,准确和自动的干扰识别至关重要,但仍然具有挑战性。基于人工智能的干扰信号识别是目前这一问题的主要研究方向。本文提出了一种新的雷达干扰识别框架 Diff-SwinT。首先,利用 Choi-Williams 分布生成干扰信号的时频表示。然后,通过在正向过程中加入高斯噪声,在反向过程中进行重建,训练出一个以 U-Net 为骨干的扩散模型,从而得到一个具有去噪能力的反向扩散模型。接下来,Swin Transformer 从去噪的时频图中提取分层多尺度特征,并将特征输入线性层进行分类。实验表明,与使用 Swin Transformer 相比,在 JNR 从 -16 dB 下降到 -8 dB 的情况下,所提出的框架能将整体准确率提高 15%-10%,证明了基于扩散的去噪在增强模型鲁棒性方面的功效。与基于 VGG 和基于特征融合的识别方法相比,所提出的框架在 JNR 从 -16 dB 到 -8 dB 的范围内具有超过 27% 的整体准确率优势。这种综合方法大大增强了复杂环境下的智能雷达干扰识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diff-SwinT: An Integrated Framework of Diffusion Model and Swin Transformer for Radar Jamming Recognition
With the increasing complexity of radar jamming threats, accurate and automatic jamming recognition is essential but remains challenging. Conventional algorithms often suffer from sharply decreased recognition accuracy under low jamming-to-noise ratios (JNR).Artificial intelligence-based jamming signal recognition is currently the main research directions for this issue. This paper proposes a new radar jamming recognition framework called Diff-SwinT. Firstly, the time-frequency representations of jamming signals are generated using Choi-Williams distribution. Then, a diffusion model with U-Net backbone is trained by adding Gaussian noise in the forward process and reconstructing in the reverse process, obtaining an inverse diffusion model with denoising capability. Next, Swin Transformer extracts hierarchical multi-scale features from the denoised time-frequency plots, and the features are fed into linear layers for classification. Experiments show that compared to using Swin Transformer, the proposed framework improves overall accuracy by 15% to 10% at JNR from −16 dB to −8 dB, demonstrating the efficacy of diffusion-based denoising in enhancing model robustness. Compared to VGG-based and feature-fusion-based recognition methods, the proposed framework has over 27% overall accuracy advantage under JNR from −16 dB to −8 dB. This integrated approach significantly enhances intelligent radar jamming recognition capability in complex environments.
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来源期刊
Future Internet
Future Internet Computer Science-Computer Networks and Communications
CiteScore
7.10
自引率
5.90%
发文量
303
审稿时长
11 weeks
期刊介绍: Future Internet is a scholarly open access journal which provides an advanced forum for science and research concerned with evolution of Internet technologies and related smart systems for “Net-Living” development. The general reference subject is therefore the evolution towards the future internet ecosystem, which is feeding a continuous, intensive, artificial transformation of the lived environment, for a widespread and significant improvement of well-being in all spheres of human life (private, public, professional). Included topics are: • advanced communications network infrastructures • evolution of internet basic services • internet of things • netted peripheral sensors • industrial internet • centralized and distributed data centers • embedded computing • cloud computing • software defined network functions and network virtualization • cloud-let and fog-computing • big data, open data and analytical tools • cyber-physical systems • network and distributed operating systems • web services • semantic structures and related software tools • artificial and augmented intelligence • augmented reality • system interoperability and flexible service composition • smart mission-critical system architectures • smart terminals and applications • pro-sumer tools for application design and development • cyber security compliance • privacy compliance • reliability compliance • dependability compliance • accountability compliance • trust compliance • technical quality of basic services.
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