Comprehensive RF Dataset Collection and Release: A Deep Learning-Based
Device Fingerprinting Use Case
- URL: http://arxiv.org/abs/2201.02213v1
- Date: Thu, 6 Jan 2022 19:07:57 GMT
- Title: Comprehensive RF Dataset Collection and Release: A Deep Learning-Based
Device Fingerprinting Use Case
- Authors: Abdurrahman Elmaghbub, Bechir Hamdaoui
- Abstract summary: We present and release a large-scale RF fingerprinting dataset, collected from 25 different LoRa-enabled IoT transmitting devices using USRP B210 receivers.
Our dataset consists of a large number of SigMF-compliant binary files representing the I/Q time-domain samples and their corresponding FFT-based files of LoRa transmissions.
- Score: 10.698553177585973
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Deep learning-based RF fingerprinting has recently been recognized as a
potential solution for enabling newly emerging wireless network applications,
such as spectrum access policy enforcement, automated network device
authentication, and unauthorized network access monitoring and control. Real,
comprehensive RF datasets are now needed more than ever to enable the study,
assessment, and validation of newly developed RF fingerprinting approaches. In
this paper, we present and release a large-scale RF fingerprinting dataset,
collected from 25 different LoRa-enabled IoT transmitting devices using USRP
B210 receivers. Our dataset consists of a large number of SigMF-compliant
binary files representing the I/Q time-domain samples and their corresponding
FFT-based files of LoRa transmissions. This dataset provides a comprehensive
set of essential experimental scenarios, considering both indoor and outdoor
environments and various network deployments and configurations, such as the
distance between the transmitters and the receiver, the configuration of the
considered LoRa modulation, the physical location of the conducted experiment,
and the receiver hardware used for training and testing the neural network
models.
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