Limited training data

Visual Intelligence aims to develop new deep learning models that solve problems involving complex images from limited training data.

Motivation

The performance of deep learning methods steadily improves with more training data. However, the availability of suitable training data is often limited. Additionally, labelling complex image data requires domain experts and is both costly and time-consuming.

This research challenge is heavily stressed by a majority of our user partners as an immediate need. To succeed in our innovation areas, it is absolutely necessary to research new methodology which learn from limited and complex training data.

Solving research challenges through new deep learning methodology

Methods which exploit weak, noisy and incompletely labelled data, be it through semi-supervised or semi-supervised approaches, make up a significant portion of our portfolio. Examples include the following:

• A self-supervised approach for content-based image retrieval of CT liver images.

• Explainable marine image analysis methods validated on multiple marine datasets, such as multi-frequency echosounder data and aerial imagery of sea mammals captured by drones.

• A self-supervised method for automatically detecting and classifying microfossils.

• Methods for automatic building change detection in aerial images based on self-supervised learning.

These methods represent time-effective and cost-effective approaches which make deep learning models less reliant on large data samples and labeled data. These improve the models’ efficiency and ability to generalize, making them more applicable in real-world settings.

Highlighted publications

Modular Superpixel Tokenization in Vision Transformers

August 28, 2024
By
Marius Aasan, Odd Kolbjørnsen, Anne Schistad Solberg, Adín Ramirez Rivera

Reinventing Self-Supervised Learning: The Magic of Memory in AI Training

July 29, 2024
By
Thalles Silva, Helio Pedrini, Adı́n Ramı́rez Rivera

Other publications

Discriminative multimodal learning via conditional priors in generative models

By authors:

Rogelio A. Mancisidor, Michael Kampffmeyer, Kjersti Aas, Robert Jenssen,

Published in:

Neural Networks, Volume 169, 2024, Pages 417-430

on

November 4, 2023

View it like a radiologist: Shifted windows for deep learning augmentation of CT images

By authors:

Østmo, Eirik Agnalt; Wickstrøm, Kristoffer; Radiya, Keyur; Kampffmeyer, Michael; Jenssen, Robert.

Published in:

2023 IEEE 33rd International Workshop on Machine Learning for Signal Processing (MLSP), Rome, Italy, 2023, pp. 1-6

on

October 23, 2023

Self-Supervised Few-Shot Learning for Ischemic Stroke Lesion Segmentation

By authors:

Tomasetti, Luca; Hansen, Stine; Khanmohammadi, Mahdieh; Engan, Kjersti; Høllesli, Liv Jorunn; Kurz, Kathinka Dæhli; Kampffmeyer, Michael Christian

Published in:

2023 IEEE 20th International Symposium on Biomedical Imaging (ISBI), Cartagena, Colombia, 2023, pp

on

September 1, 2023

ADNet++: A few-shot learning framework for multi-class medical image volume segmentation with uncertainty-guided feature refinement

By authors:

Hansen, Stine; Gautam, Srishti; Salahuddin, Suaiba Amina; Kampffmeyer, Michael Christian; Jenssen, Robert

Published in:

Medical Image Analysis 2023 ;Volum 89

on

August 2, 2023

Self-supervised Learning of Contextualized Local Visual Embeddings.

By authors:

Silva, Thalles; Pedrini, Helio; Ramírez Rivera, Adín.

Published in:

2023 IEEE/CVF International Conference on Computer Vision Workshops (ICCVW). IEEE (Institute of Electrical and Electronics Engineers) 2023

on

May 1, 2023