Data-Centric Approaches to Radio Frequency Machine Learning

被引:5
作者
Kuzdeba, Scott [1 ]
Robinson, Josh [1 ]
机构
[1] BAE Syst, FAST Labs, Merrimack, NH 03054 USA
来源
2022 IEEE MILITARY COMMUNICATIONS CONFERENCE (MILCOM) | 2022年
关键词
RF; Communications; Modulation Recognition; Deep Learning; Machine Learning; Dilated Causal Convolution; RiftNet(TM) ModRec; Data-Centric; AUTOMATIC MODULATION RECOGNITION;
D O I
10.1109/MILCOM55135.2022.10017662
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The successes of machine learning (ML), and in particular deep learning, in other fields has inspired similar research within the radio frequency (RF) domain. Initial research in RF ML has been largely applied to the application of modulation recognition, with the past several years seeing it expand into other applications as well. The field has slowly evolved from the direct application of models developed in other fields, e.g., convolutional neural networks (CNN), to ones that are better suited for RF signals, e.g., dilated causal convolutions (DCCs). At the same time, the broader ML community has realized the importance data has on deep learning performance and a growing datacentric ML movement has emerged. In this paper, we return to the problem of modulation recognition and provide insights into how a data-centric approach can be coupled with a DCC model. In particular, we look at cases with limited amounts of training data and investigate means to achieve levels of performance typical reserved for larger training datasets. This is done by developing specific SNR models, data augmentation, performing multi-burst processing, and upsampling expected undersampled parts of an unbalanced training dataset. Overall, we present ways to intelligently use sparse available data to achieve the same performance as larger datasets, helping to mitigate a challenge in RF ML where gathering and curating large representative datasets is not always feasible.
引用
收藏
页数:6
相关论文
共 28 条
[1]  
Clark WH, 2024, Arxiv, DOI arXiv:2205.03703
[2]  
Dechun Sun, 2019, 2019 IEEE 5th International Conference on Computer and Communications (ICCC), P1575, DOI 10.1109/ICCC47050.2019.9064328
[3]   Machine Learning Based Automatic Modulation Recognition for Wireless Communications: A Comprehensive Survey [J].
Jdid, Bachir ;
Hassan, Kais ;
Dayoub, Iyad ;
Lim, Wei Hong ;
Mokayef, Mastaneh .
IEEE ACCESS, 2021, 9 :57851-57873
[4]  
Karra K, 2017, IEEE INT SYMP DYNAM
[5]  
Kjaersgaard RD, 2021, Arxiv, DOI [arXiv:2111.09065, 10.48550/ARXIV.2111.09065]
[6]   Complex-Valued Convolutions for Modulation Recognition using Deep Learning [J].
Krzyston, Jakob ;
Bhattacharjea, Rajib ;
Stark, Andrew .
2020 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS WORKSHOPS (ICC WORKSHOPS), 2020,
[7]  
Kuzdeba S., 2021, 2021 55 ASILOMAR C S
[8]   Systems View to Designing RF Fingerprinting for Real-World Operations [J].
Kuzdeba, Scott ;
Robinson, Josh ;
Carmack, Joseph ;
Couto, David .
PROCEEDINGS OF THE 2022 ACM WORKSHOP ON WIRELESS SECURITY AND MACHINE LEARNIG (WISEML '22), 2022, :33-38
[9]   Transfer Learning with Radio Frequency Signals [J].
Kuzdeba, Scott ;
Robinson, Josh ;
Carmack, Joseph .
2021 IEEE 18TH ANNUAL CONSUMER COMMUNICATIONS & NETWORKING CONFERENCE (CCNC), 2021,
[10]   Automatic Modulation Recognition: A Few-Shot Learning Method Based on the Capsule Network [J].
Li, Lixin ;
Huang, Junsheng ;
Cheng, Qianqian ;
Meng, Hongying ;
Han, Zhu .
IEEE WIRELESS COMMUNICATIONS LETTERS, 2021, 10 (03) :474-477