Log in
Enquire now
‌

Intelligent Meta-Imagers: From Compressed to Learned Sensing

OverviewStructured DataIssuesContributors

Contents

Is a
‌
Academic paper
0

Academic Paper attributes

arXiv ID
2110.140220
arXiv Classification
Physics
Physics
0
Publication URL
arxiv.org/pdf/2110.1...22.pdf0
Publisher
ArXiv
ArXiv
0
DOI
doi.org/10.48550/ar...10.140220
Paid/Free
Free0
Academic Discipline
Computer science
Computer science
0
Information theory
Information theory
0
Optics
Optics
0
Physics
Physics
0
Electrical engineering
Electrical engineering
0
Signal processing
Signal processing
0
Applied physics
Applied physics
0
Submission Date
January 4, 2022
0
October 26, 2021
0
January 28, 2022
0
October 28, 2021
0
Author Names
Hanting Zhao0
Rashid Faqiri0
Philipp del Hougne0
Chloé Saigre-Tardif0
Lianlin Li0
Paper abstract

Computational meta-imagers synergize metamaterial hardware with advanced signal processing approaches such as compressed sensing. Recent advances in artificial intelligence (AI) are gradually reshaping the landscape of meta-imaging. Most recent works use AI for data analysis, but some also use it to program the physical meta-hardware. The role of "intelligence" in the measurement process and its implications for critical metrics like latency are often not immediately clear. Here, we comprehensively review the evolution of computational meta-imaging from the earliest frequency-diverse compressive systems to modern programmable intelligent meta-imagers. We introduce a clear taxonomy in terms of the flow of task-relevant information that has direct links to information theory: compressive meta-imagers indiscriminately acquire all scene information in a task-agnostic measurement process that aims at a near-isometric embedding; intelligent meta-imagers highlight task-relevant information in a task-aware measurement process that is purposefully non-isometric. The measurement process of intelligent meta-imagers is thus simultaneously an analog wave processor that implements a first task-specific inference step "over-the-air". We provide explicit design tutorials for the integration of programmable meta-atoms as trainable physical weights into an intelligent end-to-end sensing pipeline. This merging of the physical world of metamaterial engineering and the digital world of AI enables the remarkable latency gains of intelligent meta-imagers. We further outline emerging opportunities for cognitive meta-imagers with reverberation-enhanced resolution and we point out how the meta-imaging community can reap recent advances in the vibrant field of metamaterial wave processors to reach the holy grail of low-energy ultra-fast all-analog intelligent meta-sensors.

Timeline

No Timeline data yet.

Further Resources

Title
Author
Link
Type
Date
No Further Resources data yet.

References

Find more entities like Intelligent Meta-Imagers: From Compressed to Learned Sensing

Use the Golden Query Tool to find similar entities by any field in the Knowledge Graph, including industry, location, and more.
Open Query Tool
Access by API
Golden Query Tool
Golden logo

Company

  • Home
  • Press & Media
  • Blog
  • Careers
  • WE'RE HIRING

Products

  • Knowledge Graph
  • Query Tool
  • Data Requests
  • Knowledge Storage
  • API
  • Pricing
  • Enterprise
  • ChatGPT Plugin

Legal

  • Terms of Service
  • Enterprise Terms of Service
  • Privacy Policy

Help

  • Help center
  • API Documentation
  • Contact Us