Large Scale Radio Frequency Wideband Signal Detection & Recognition
- URL: http://arxiv.org/abs/2211.10335v1
- Date: Fri, 4 Nov 2022 13:24:53 GMT
- Title: Large Scale Radio Frequency Wideband Signal Detection & Recognition
- Authors: Luke Boegner and Garrett Vanhoy and Phillip Vallance and Manbir Gulati
and Dresden Feitzinger and Bradley Comar and Robert D. Miller
- Abstract summary: We introduce the WidebandSig53 dataset which consists of 550 thousand synthetically-generated samples from 53 different signal classes.
We extend the TorchSig signal processing machine learning toolkit for open-source and customizable generation, augmentation, and processing of the WBSig53 dataset.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
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