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  4. XR-RF Imaging Enabled by Software-Defined Metasurfaces and Machine Learning: Foundational Vision, Technologies and Challenges
 
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2022
Journal Article
Title

XR-RF Imaging Enabled by Software-Defined Metasurfaces and Machine Learning: Foundational Vision, Technologies and Challenges

Abstract
In this work, we present a new approach to Extended Reality (XR), denoted as iCOPYWAVES, which seeks to offer naturally low-latency operation and cost effectiveness, overcoming the critical scalability issues faced by existing solutions. Specifically, iCOPYWAVES is enabled by emerging PWEs, a recently proposed technology in wireless communications. Empowered by intelligent metasurfaces, PWEs transform the wave propagation phenomenon into a software-defined process. To this end, we leverage PWEs to: i) create, and then ii) selectively copy the scattered RF wavefront of an object from one location in space to another, where a machine learning module, accelerated by FPGAs, translates it to visual input for an XR headset using PWE-driven, RF imaging principles (XR-RF). This makes an XR system whose operation is bounded in the physical-layer and, hence, has the prospects for minimal end-to-end latency. For the case of large distances, RF-to-fiber/fiber-to-RF is employed to provide intermediate connectivity. The paper provides a tutorial on the iCOPYWAVES system architecture and workflow. Finally, a proof-of-concept implementation via simulations is provided, demonstrating the reconstruction of challenging objects in iCOPYWAVES-produced computer graphics.
Author(s)
Liaskos, Christos K.
Tsioliaridou, Ageliki N.
Georgopoulos, Konstantinos
Morianos, Ioannis
Ioannidis, Sotiris
Salem, Iosif
Manessis, Dionyssios
Fraunhofer-Institut für Zuverlässigkeit und Mikrointegration IZM  
Schmid, Stefan
Tyrovolas, Dimitrios
Tegos, Sotiris A.
Mekikis, Prodromos Vasileios
Diamantoulakis, Panagiotis D.
Pitilakis, Alexandros K.
Kantartzis, Nikolaos V.
Karagiannidis, George K.
Tasolamprou, Anna C.
Tsilipakos, Odysseas
Kafesaki, Maria
Akyìldìz, Ian Fuat
Pitsillides, Andreas
Pateraki, Maria
Vakalellis, Michael
Spais, Ilias
Journal
IEEE access  
Project(s)
A COmprehensive cyber-intelligence framework for resilient coLLABorative manufacturing Systems  
Funding(s)
H2020-EU.2.1.1.  
Funder
European Commission
Open Access
DOI
10.1109/ACCESS.2022.3219871
Additional link
Full text
Language
English
Fraunhofer-Institut für Zuverlässigkeit und Mikrointegration IZM  
Keyword(s)
  • applications

  • Extended/virtual/augmented reality

  • generative adversarial networks

  • machine learning

  • propagation

  • software-defined networking

  • wireless

  • XR-RF imaging

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