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Main Authors: Keshavarzchafjiri, Amirhossein, Dassanayake, Janith K., Baduge, Gayan A. Aruma, Vaezi, Mojtaba
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.22533
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author Keshavarzchafjiri, Amirhossein
Dassanayake, Janith K.
Baduge, Gayan A. Aruma
Vaezi, Mojtaba
author_facet Keshavarzchafjiri, Amirhossein
Dassanayake, Janith K.
Baduge, Gayan A. Aruma
Vaezi, Mojtaba
contents A novel Gamma-distributed geometric constellation design framework for integrated sensing and communication (ISAC) is proposed in this paper. In this framework, constellation points are modeled as samples drawn from a parameterized two-dimensional distribution, with a Gamma distribution for the amplitude and a uniform distribution for the phase. End-task performance metrics, namely, the probability of detection for sensing and mutual information for communication, are used as objective functions of the optimization problem, and the problem is solved via particle swarm optimization. We further derive analytical performance bounds for the proposed design, including the union bound on the symbol error rate for communication and the Cramer--Rao bound for sensing parameter estimation. The proposed method is compared with constellations obtained via end-to-end neural network design, demonstrating competitive performance while requiring significantly fewer parameters and no training data. Moreover, the proposed geometric constellation is more compatible with conventional system architectures than probabilistic or neural network-based designs.
format Preprint
id arxiv_https___arxiv_org_abs_2604_22533
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Gamma-Distributed Geometric Constellation for ISAC: Design and Analysis
Keshavarzchafjiri, Amirhossein
Dassanayake, Janith K.
Baduge, Gayan A. Aruma
Vaezi, Mojtaba
Information Theory
A novel Gamma-distributed geometric constellation design framework for integrated sensing and communication (ISAC) is proposed in this paper. In this framework, constellation points are modeled as samples drawn from a parameterized two-dimensional distribution, with a Gamma distribution for the amplitude and a uniform distribution for the phase. End-task performance metrics, namely, the probability of detection for sensing and mutual information for communication, are used as objective functions of the optimization problem, and the problem is solved via particle swarm optimization. We further derive analytical performance bounds for the proposed design, including the union bound on the symbol error rate for communication and the Cramer--Rao bound for sensing parameter estimation. The proposed method is compared with constellations obtained via end-to-end neural network design, demonstrating competitive performance while requiring significantly fewer parameters and no training data. Moreover, the proposed geometric constellation is more compatible with conventional system architectures than probabilistic or neural network-based designs.
title Gamma-Distributed Geometric Constellation for ISAC: Design and Analysis
topic Information Theory
url https://arxiv.org/abs/2604.22533