首届无线电路径损耗地图预测挑战赛概述

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Çağkan Yapar;Fabian Jaensch;Ron Levie;Gitta Kutyniok;Giuseppe Caire
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引用次数: 0

摘要

路径损耗量化了发射机辐射信号功率密度的降低。衰减是由于自由空间传播损耗和信号与传播环境中的建筑物、车辆、树木和行人等物体的相互作用(如穿透、反射和衍射)等大规模效应造成的。许多当前或计划中的无线通信应用都需要了解相关环境密集网格(无线电地图)上的路径损耗(或可靠的近似值)。众所周知,光线跟踪等确定性模拟方法可以提供非常好的路径损耗值估计。然而,由于其计算复杂度高,不适合大多数设想的应用。为了推动研究,促进对最近提出的基于深度学习的快速、准确无线电路径损耗地图预测方法进行公平比较,我们组织了 ICASSP 2023 首届路径损耗无线电地图预测挑战赛。在这篇综述论文中,我们将介绍路径损耗无线电地图预测问题,提供当前技术水平的文献调查,描述挑战数据集、挑战任务和挑战评估方法。最后,我们对提交的方法进行了简要概述,并介绍了挑战赛的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Overview of the First Pathloss Radio Map Prediction Challenge
Pathloss quantifies the reduction in power density of a signal radiated from a transmitter. The attenuation is due to large-scale effects such as free-space propagation loss and interactions (e.g., penetration, reflection, and diffraction) of the signal with objects such as buildings, vehicles, trees, and pedestrians in the propagation environment. Many current or planned wireless communications applications require the knowledge (or a reliable approximation) of the pathloss on a dense grid (radio map) of the environment of interest. Deterministic simulation methods such as ray tracing are known to provide very good estimates of pathloss values. However, their high computational complexity makes them unsuitable for most of the applications envisaged. To promote research and facilitate a fair comparison among the recently proposed fast and accurate deep learning-based pathloss radio map prediction methods, we have organized the ICASSP 2023 First Pathloss Radio Map Prediction Challenge. In this overview paper, we describe the pathloss radio map prediction problem, provide a literature survey of the current state of the art, describe the challenge datasets, the challenge task, and the challenge evaluation methodology. Finally, we provide a brief overview of the submitted methods and present the results of the challenge.
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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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