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Main Authors: Liu, Fan, Liu, Ya-Feng, Cui, Yuanhao, Masouros, Christos, Xu, Jie, Han, Tony Xiao, Buzzi, Stefano, Eldar, Yonina C., Jin, Shi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.10819
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author Liu, Fan
Liu, Ya-Feng
Cui, Yuanhao
Masouros, Christos
Xu, Jie
Han, Tony Xiao
Buzzi, Stefano
Eldar, Yonina C.
Jin, Shi
author_facet Liu, Fan
Liu, Ya-Feng
Cui, Yuanhao
Masouros, Christos
Xu, Jie
Han, Tony Xiao
Buzzi, Stefano
Eldar, Yonina C.
Jin, Shi
contents The Integrated Sensing and Communications (ISAC) paradigm is anticipated to be a cornerstone of the upcoming 6G networks. In order to optimize the use of wireless resources, 6G ISAC systems need to harness the communication data payload signals, which are inherently random, for both sensing and communication (S&C) purposes. This tutorial paper provides a comprehensive technical overview of the fundamental theory and signal processing methodologies for ISAC transmission with random communication signals. We begin by introducing the deterministic-random tradeoff (DRT) between S&C from an information-theoretic perspective, emphasizing the need for specialized signal processing techniques tailored to random ISAC signals. Building on this foundation, we review the core signal models and processing pipelines for communication-centric ISAC systems, and analyze the average squared auto-correlation function (ACF) of random ISAC signals, which serves as a fundamental performance metric for multi-target ranging tasks. Drawing insights from these theoretical results, we outline the design principles for the three key components of communication-centric ISAC systems: modulation schemes, constellation design, and pulse shaping filters. The goal is to either enhance sensing performance without compromising communication efficiency or to establish a scalable tradeoff between the two. We then extend our analysis from a single-antenna ISAC system to its multi-antenna counterpart, discussing recent advancements in multi-input multi-output (MIMO) precoding techniques specifically designed for random ISAC signals. We conclude by highlighting several open challenges and future research directions in the field of sensing with communication signals.
format Preprint
id arxiv_https___arxiv_org_abs_2502_10819
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Sensing With Communication Signals: From Information Theory to Signal Processing
Liu, Fan
Liu, Ya-Feng
Cui, Yuanhao
Masouros, Christos
Xu, Jie
Han, Tony Xiao
Buzzi, Stefano
Eldar, Yonina C.
Jin, Shi
Information Theory
The Integrated Sensing and Communications (ISAC) paradigm is anticipated to be a cornerstone of the upcoming 6G networks. In order to optimize the use of wireless resources, 6G ISAC systems need to harness the communication data payload signals, which are inherently random, for both sensing and communication (S&C) purposes. This tutorial paper provides a comprehensive technical overview of the fundamental theory and signal processing methodologies for ISAC transmission with random communication signals. We begin by introducing the deterministic-random tradeoff (DRT) between S&C from an information-theoretic perspective, emphasizing the need for specialized signal processing techniques tailored to random ISAC signals. Building on this foundation, we review the core signal models and processing pipelines for communication-centric ISAC systems, and analyze the average squared auto-correlation function (ACF) of random ISAC signals, which serves as a fundamental performance metric for multi-target ranging tasks. Drawing insights from these theoretical results, we outline the design principles for the three key components of communication-centric ISAC systems: modulation schemes, constellation design, and pulse shaping filters. The goal is to either enhance sensing performance without compromising communication efficiency or to establish a scalable tradeoff between the two. We then extend our analysis from a single-antenna ISAC system to its multi-antenna counterpart, discussing recent advancements in multi-input multi-output (MIMO) precoding techniques specifically designed for random ISAC signals. We conclude by highlighting several open challenges and future research directions in the field of sensing with communication signals.
title Sensing With Communication Signals: From Information Theory to Signal Processing
topic Information Theory
url https://arxiv.org/abs/2502.10819