Task-Oriented Communications for NextG: End-to-End Deep Learning and AI Security Aspects

12/19/2022
by   Yalin E. Sagduyu, et al.
0

Communications systems to date are primarily designed with the goal of reliable (error-free) transfer of digital sequences (bits). Next generation (NextG) communication systems are beginning to explore shifting this design paradigm of reliably decoding bits to reliably executing a given task. Task-oriented communications system design is likely to find impactful applications, for example, considering the relative importance of messages. In this paper, a wireless signal classification is considered as the task to be performed in the NextG Radio Access Network (RAN) for signal intelligence and spectrum awareness applications such as user equipment (UE) identification and authentication, and incumbent signal detection for spectrum co-existence. For that purpose, edge devices collect wireless signals and communicate with the NextG base station (gNodeB) that needs to know the signal class. Edge devices may not have sufficient processing power and may not be trusted to perform the signal classification task, whereas the transfer of the captured signals from the edge devices to the gNodeB may not be efficient or even feasible subject to stringent delay, rate, and energy restrictions. We present a task-oriented communications approach, where all the transmitter, receiver and classifier functionalities are jointly trained as two deep neural networks (DNNs), one for the edge device and another for the gNodeB. We show that this approach achieves better accuracy with smaller DNNs compared to the baselines that treat communications and signal classification as two separate tasks. Finally, we discuss how adversarial machine learning poses a major security threat for the use of DNNs for task-oriented communications. We demonstrate the major performance loss under backdoor (Trojan) attacks and adversarial (evasion) attacks that target the training and test processes of task-oriented communications.

READ FULL TEXT
research
01/07/2021

Adversarial Machine Learning for 5G Communications Security

Machine learning provides automated means to capture complex dynamics of...
research
07/19/2022

Beyond Transmitting Bits: Context, Semantics, and Task-Oriented Communications

Communication systems to date primarily aim at reliably communicating bi...
research
05/12/2020

Deep Learning for Wireless Communications

Existing communication systems exhibit inherent limitations in translati...
research
08/14/2023

Multi-Receiver Task-Oriented Communications via Multi-Task Deep Learning

This paper studies task-oriented, otherwise known as goal-oriented, comm...
research
01/11/2023

Age of Information in Deep Learning-Driven Task-Oriented Communications

This paper studies the notion of age in task-oriented communications tha...
research
03/18/2021

Discriminative Singular Spectrum Classifier with Applications on Bioacoustic Signal Recognition

Automatic analysis of bioacoustic signals is a fundamental tool to evalu...
research
12/21/2022

Vulnerabilities of Deep Learning-Driven Semantic Communications to Backdoor (Trojan) Attacks

This paper highlights vulnerabilities of deep learning-driven semantic c...

Please sign up or login with your details

Forgot password? Click here to reset