Multi-Modal Intelligent Channel Modeling: A New Modeling Paradigm via Synesthesia of Machines
Lu Bai, Ziwei Huang, Mingran Sun, Xiang Cheng, Lizhen Cui

TL;DR
This paper reviews multi-modal intelligent channel modeling (MMICM) using Synesthesia of Machines, highlighting its advantages over RF-only methods for more accurate environment understanding in 6G.
Contribution
It provides a comprehensive review of MMICM, elaborates on recent advances, and discusses applications, simulation results, and future research directions.
Findings
Multi-modal information enhances channel modeling accuracy.
Simulation results demonstrate the superiority of MMICM via SoM.
Open issues and future directions are identified.
Abstract
In the future sixth-generation (6G) era, to support accurate localization sensing and efficient communication link establishment for intelligent agents, a comprehensive understanding of the surrounding environment and proper channel modeling are indispensable. The existing method, which solely exploits radio frequency (RF) communication information, is difficult to accomplish accurate channel modeling. Fortunately, multi-modal devices are deployed on intelligent agents to obtain environmental features, which could further assist in channel modeling. Currently, some research efforts have been devoted to utilizing multi-modal information to facilitate channel modeling, while still lack a comprehensive review. To fill this gap, we embark on an initial endeavor with the goal of reviewing multi-modal intelligent channel modeling (MMICM) via Synesthesia of Machines (SoM). Compared to channel…
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Taxonomy
TopicsNeural Networks and Applications
