Improving RF-DNA Fingerprinting Performance in an Indoor Multipath Environment Using Semi-Supervised Learning

04/02/2023
by   Mohamed k. Fadul, et al.
0

The number of Internet of Things (IoT) deployments is expected to reach 75.4 billion by 2025. Roughly 70 thus, putting them and their connected infrastructure at risk of attack by devices that are wrongly authenticated or not authenticated at all. A physical layer security approach – known as Specific Emitter Identification (SEI) – has been proposed and is being pursued as a viable IoT security mechanism. SEI is advantageous because it is a passive technique that exploits inherent and distinct features that are unintentionally added to the signal by the IoT Radio Frequency (RF) front-end. SEI's passive exploitation of unintentional signal features removes any need to modify the IoT device, which makes it ideal for existing and future IoT deployments. Despite the amount of SEI research conducted, some challenges must be addressed to make SEI a viable IoT security approach. One challenge is the extraction of SEI features from signals collected under multipath fading conditions. Multipath corrupts the inherent SEI features that are used to discriminate one IoT device from another; thus, degrading authentication performance and increasing the chance of attack. This work presents two semi-supervised Deep Learning (DL) equalization approaches and compares their performance with the current state of the art. The two approaches are the Conditional Generative Adversarial Network (CGAN) and Joint Convolutional Auto-Encoder and Convolutional Neural Network (JCAECNN). Both approaches learn the channel distribution to enable multipath correction while simultaneously preserving the SEI exploited features. CGAN and JCAECNN performance is assessed using a Rayleigh fading channel under degrading SNR, up to thirty-two IoT devices, and two publicly available signal sets. The JCAECNN improves SEI performance by 10

READ FULL TEXT

page 1

page 7

page 9

research
05/06/2020

Preprint: Using RF-DNA Fingerprints To Classify OFDM Transmitters Under Rayleigh Fading Conditions

The Internet of Things (IoT) is a collection of Internet connected devic...
research
05/19/2020

Pre-print: Radio Identity Verification-based IoT Security Using RF-DNA Fingerprints and SVM

It is estimated that the number of IoT devices will reach 75 billion in ...
research
07/20/2019

Radio Frequency Fingerprint Identification Based on Denoising Autoencoders

Radio Frequency Fingerprinting (RFF) is one of the promising passive aut...
research
06/12/2020

Injecting Reliable Radio Frequency Fingerprints Using Metasurface for The Internet of Things

In Internet of Things, where billions of devices with limited resources ...
research
03/01/2018

Deep Learning for Signal Authentication and Security in Massive Internet of Things Systems

Secure signal authentication is arguably one of the most challenging pro...
research
04/08/2019

Towards Motion Invariant Authentication for On-Body IoT Devices

As the rapid proliferation of on-body Internet of Things (IoT) devices, ...
research
10/14/2022

Semi-supervised Learning with Network Embedding on Ambient RF Signals for Geofencing Services

In applications such as elderly care, dementia anti-wandering and pandem...

Please sign up or login with your details

Forgot password? Click here to reset