A Norwegian centre for research-based innovation

Through long-term research in close collaboration between industry, public institutions and prominent research partners, we enable novel innovations, technology transfer, internationalization and researcher training.

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We research the next generation of deep learning methodology for visual data and produce solutions for our consortium partners across innovation areas in medicine and health, marine science, energy, and earth observation.

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Visual Intelligence Seminar #98: EoS-FM: Can an Ensemble of Specialists Models Act As a Generalist Feature Extractor?

June 18, 2026

When:
August 13, 2026
,
15:00
August 13, 2026
,
15:45
@
Kunstig intelligens-teltet, Kirkebakken 19, Tyholmen

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AI matches human experts in classifying microscopic organisms

August 15, 2025

New study shows how deep learning can achieve human-level performance in estimating uncertainty when classifying foraminifera.

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Visual Data Diagnosis and Debiasing with Concept Graphs

March 6, 2025

We propose ConBias, a bias diagnosis and debiasing pipeline for visual datasets.

Recent publications

Mitigating Embedding Leakage via Latent Disruption with Controlled Reconstruction

By authors:

Zhiyuan Wu,Changkyu Choi,Shujian Yu,Robert Jenssen,Ali Ramezani-Kebrya

Published in:

Transactions on Machine Learning Research (June/2026)

on

August 6, 2026

Explaining Latent Representations of Neural Networks with Archetypal Analysis

By authors:

Anna Emilie Jennow Wedenborg, Kristoffer Wickstrøm, Lars Kai Hansen, Morten Mørup, Teresa Dorszewski

Published in:

Proceedings of the 7th Northern Lights Deep Learning Conference (NLDL), PMLR 307:448-468, 2026.

on

May 1, 2026

Concepts' Information Bottleneck Models

By authors:

Karim Galliamov,Syed M Ahsan Kazmi,Adil Mehmood Khan,Adín Ramírez Rivera

Published in:

International Conference on Learning Representations (ICLR), 2026

on

April 23, 2026

Suppressing Non-Semantic Noise in Masked Image Modeling Representations

By authors:

Martine Hjelkrem-Tan, Marius Aasan, Rwiddhi Chakraborty, Gabriel Y. Arteaga, Changkyu Choi, Adín Ramirez Rivera

Published in:

CPVR 2026

on

March 31, 2026

A robust and versatile deep learning model for prediction of the arterial input function in dynamic small animal [18F] FDG PET imaging

By authors:

Christian Salomonsen, Luigi T. Luppino, Fredrik Aspheim, Kristoffer Wickstrøm, Elisabeth Wetzer, Michael Kampffmeyer, Rodrigo Berzaghi, Rune Sundset, Robert Jenssen & Samuel Kuttner

Published in:

EJNMMI Res 16, 65 (2026)

on

March 9, 2026

SuperCM: Improving semi-supervised learning and domain adaptation through differentiable clustering

By authors:

Durgesh Kumar Singh, Ahcene Boubekki, Robert Jenssen, Michael Kampffmeyer

Published in:

Pattern Recognition, vol 171, Part A, Article: 112117

on

March 3, 2026

Research challenges

Visual Intelligence address the research challenges of deep learning and computer vision that limit our user partners in utilizing their complex visual data in their applications.

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Innovation areas

We contribute to reliable use of AI to detect heart disease, monitor the environment and potential natural disasters as well as detecting natural resources. Read more about our work in the different innovation areas.

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Our partners

Visual Intelligence is a consortium headed by UiT The Arctic University of Norway with research partners at the University of Oslo and the Norwegian Computing Center. Together with our consortium of high-profile user partners, we create cutting-edge solutions that will be implemented in the applications of the user partners.

UiT The Arctic University of Norway logoUiO: University of Oslo logoUniversity hospital of north norway logoHelse nord ikt logoInstitute of marine research logoKongsberg satellite services logoGE Healthcare logoEquinor logoCancer Registry of Norwat logo