Telecommunications and Computer Vision Convergence Tools for Research Infrastructures

Acronym

CONVERGE

Description of the granted funding

Telecommunications and computer vision have evolved as separate scientific areas. This is envisioned to change with the advent of wireless communications with radios characterised by line-of-sight ranges which could benefit from visual data to predict the wireless channel dynamics. Computer vision applications will also become more robust if helped by radio-based imaging. This new joint research field relies on wireless communications, computer vision, sensing and machine learning, and it has a high innovation potential because of the large domain of innovative applications it enables and the relevant know-how available in Europe. However, the full potential of this new area can only be evaluated if adequate Research Infrastructures (RI) and tools are available. The main objective of the CONVERGE project is the development of an innovative toolset aligned with the motto “view-to-communicate and communicate-to-view”. This toolset is a world-first and consists of vision-aided large intelligent surfaces, vision-aided fixed and mobile base stations, a vision-radio simulator and 3D environment modeler, and machine learning algorithms for multimodal data including radio signals, video streams, RF sensing, and traffic traces. This toolset will be deployed into 7 RIs mostly aligned with the ESFRI SLICES-RI and improve their competitiveness. CONVERGE will also provide the scientific community with open datasets of experimental and simulated data obtained with the toolset in the RIs, meet scientific and industrial requirements by addressing relevant 6G verticals, enhance the competitiveness of the involved companies, extend the European influence to world-wide recognised RIs, enable the creation of new RIs, contribute to the development of new environment-friendly tools, and help European Union to address its societal challenges.
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Starting year

2023

End year

2026

Granted funding

1 583 125 €
Participant
346 255 €
Participant
FINCLOUD OY
160 975 €
Participant
FINWE OY
366 500 €
Participant
GREENERWAVE (FR)
870 000 €
Participant
ADTECHNOLOGIES, UNIPESSOAL LDA (PT)
512 773.75 €
Participant
Rice University (US)
Participant
SORBONNE UNIVERSITE (FR)
278 750 €
Participant
ALLBESMART LDA (PT)
563 750 €
Participant
INTERDIGITAL EUROPE LTD (UK)
Participant
INESC TEC - INSTITUTO DE ENGENHARIADE SISTEMAS E COMPUTADORES, TECNOLOGIA E CIENCIA (PT)
1 557 500 €
Coordinator
INSTITUT NATIONAL DE RECHERCHE ENINFORMATIQUE ET AUTOMATIQUE (FR)
539 500 €
Participant
EURECOM (FR)
980 449 €
Participant
BARCELONA SUPERCOMPUTING CENTER - CENTRO NACIONAL DE SUPERCOMPUTACION (ES)
265 625 €
Participant
RUTGERS, THE STATE UNIVERSITY OF NEW JERSEY (US)
Participant
THE QUEEN'S UNIVERSITY OF BELFAST (UK)
Participant

Amount granted

8 025 203 €

Funder

European Union

Funding instrument

HORIZON Research and Innovation Actions

Framework programme

Horizon Europe (HORIZON)

Call

Programme part
Research infrastructures (11683)
The innovation potential of European Research Infrastructures and activities for Innovation and Training (11686)
Topic
R&D for the next generation of scientific instrumentation, tools and methods (HORIZON-INFRA-2022-TECH-01-01)
Call ID
HORIZON-INFRA-2022-TECH-01

Other information

Funding decision number

101094831

Identified topics

digitalisation, digital