论文标题
大型射频宽带信号检测和识别
Large Scale Radio Frequency Wideband Signal Detection & Recognition
论文作者
论文摘要
深度学习到射频(RF)域的应用主要集中在已经检测到并从宽带捕获中检测到并提取的窄带信号分类的任务。为了鼓励通过宽带操作进行更广泛的研究,我们介绍了宽带Sig53(WBSIG53)数据集,该数据集由来自53个不同信号类别的5.5万合成生成样品组成,其中包含约200万个独特的信号。我们扩展了用于开源和可自定义生成,增强和处理WBSIG53数据集的火炬信号处理机学习工具包。我们使用ART状态(SOTA)卷积神经网络和变压器使用WBSIG53数据集进行实验。我们研究了信号检测任务的性能,即检测输入数据中所有信号的存在,时间和频率以及信号识别任务的性能,其中网络检测到输入数据中存在的所有信号的存在,时间,频率和调制家族。通过在复杂的输入频谱图上运行的分段网络和对象检测网络评估了这些任务的两种主要方法。最后,我们根据网络的平均平均精度,平均平均召回和推理速度对各种方法进行了比较分析。
Applications of deep learning to the radio frequency (RF) domain have largely concentrated on the task of narrowband signal classification after the signals of interest have already been detected and extracted from a wideband capture. To encourage broader research with wideband operations, we introduce the WidebandSig53 (WBSig53) dataset which consists of 550 thousand synthetically-generated samples from 53 different signal classes containing approximately 2 million unique signals. We extend the TorchSig signal processing machine learning toolkit for open-source and customizable generation, augmentation, and processing of the WBSig53 dataset. We conduct experiments using state of the art (SoTA) convolutional neural networks and transformers with the WBSig53 dataset. We investigate the performance of signal detection tasks, i.e. detect the presence, time, and frequency of all signals present in the input data, as well as the performance of signal recognition tasks, where networks detect the presence, time, frequency, and modulation family of all signals present in the input data. Two main approaches to these tasks are evaluated with segmentation networks and object detection networks operating on complex input spectrograms. Finally, we conduct comparative analysis of the various approaches in terms of the networks' mean average precision, mean average recall, and the speed of inference.