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Transmitter Classification With Supervised Deep Learning

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arxiv 1905.07923 v1 pith:2NK23QWA submitted 2019-05-20 eess.SP cs.LGcs.NE

Transmitter Classification With Supervised Deep Learning

classification eess.SP cs.LGcs.NE
keywords datasetslearningcortexlabdeepfuturenetworkneuralscenarios
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Hardware imperfections in RF transmitters introduce features that can be used to identify a specific transmitter amongst others. Supervised deep learning has shown good performance in this task but using datasets not applicable to real world situations where topologies evolve over time. To remedy this, the work rests on a series of datasets gathered in the Future Internet of Things / Cognitive Radio Testbed [4] (FIT/CorteXlab) to train a convolutional neural network (CNN), where focus has been given to reduce channel bias that has plagued previous works and constrained them to a constant environment or to simulations. The most challenging scenarios provide the trained neural network with resilience and show insight on the best signal type to use for identification , namely packet preamble. The generated datasets are published on the Machine Learning For Communications Emerging Technologies Initiatives web site 4 in the hope that they serve as stepping stones for future progress in the area. The community is also invited to reproduce the studied scenarios and results by generating new datasets in FIT/CorteXlab.

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