雷达信号表征的多任务学习

Z. Huang, Akila Pemasiri, S. Denman, C. Fookes, Terrence Martin
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引用次数: 0

摘要

无线电信号识别在民用和军事应用中都是一项至关重要的任务,因为准确及时地识别未知信号是频谱管理和电子战的重要组成部分。该领域的大多数研究都集中在将深度学习应用于调制分类上,而信号表征的任务则是一个研究不足的领域。本文通过提出一种将雷达信号分类和表征作为多任务学习(MTL)问题的方法来解决这一差距。我们在几个参考架构中提出了IQ信号转换器(IQST),允许同时优化多个回归和分类任务。我们在合成雷达数据集上展示了我们提出的MTL模型的性能,同时也为雷达信号表征提供了首个同类基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Task Learning For Radar Signal Characterisation
Radio signal recognition is a crucial task in both civilian and military applications, as accurate and timely identification of unknown signals is an essential part of spectrum management and electronic warfare. The majority of research in this field has focused on applying deep learning for modulation classification, leaving the task of signal characterisation as an understudied area. This paper addresses this gap by presenting an approach for tackling radar signal classification and characterisation as a multi-task learning (MTL) problem. We propose the IQ Signal Transformer (IQST) among several reference architectures that allow for simultaneous optimisation of multiple regression and classification tasks. We demonstrate the performance of our proposed MTL model on a synthetic radar dataset, while also providing a first-of-its-kind benchmark for radar signal characterisation.
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