Reseach Scientist

Ingrid Utseth

Publications

  • 31 publications found
Utseth, Ingrid; Vedal, Amund Hansen; Thomas, Sarina og Eikvil, Line. (2026).
Comparing Foundation Models for Medical Images: A Study on Limited Data and Generalization.
Proceedings of Machine Learning Research (PMLR). 6. januar 2026. ISSN 2640-3498. Vol. 307. S. 439-447.
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In this study we have investigated how vision foundation models, pretrained on different domains, compete with a specialized model for classification as a function of the size of the labeled training set of medical images. Furthermore, we have looked into the different models' ability to generalize to difficult cases. Our experiments are conducted for cardiac ultrasound images and the downstream task of view recognition. Still, this classification task is meant to serve as a demonstrative example, where we think that the findings should be transferable to other classification tasks and other domains. Through these experiments we found that the foundation models were able to beat the performance of our task-specific supervised model when labelled training data were limited. This was true even for models trained on natural images and when using the simple linear probing method to create a classifier. We observed that more domain-specific foundation models achieved an even higher performance with limited data. On the other hand, the more general models showed a greater ability to generalize and perform well on difficult, out-of-distribution cases. Still, for typical in-domain cases with sufficient labeled data, a task-specific ResNet model was competitive with the foundation models, while also being both smaller and faster.
Utseth, Ingrid; Vedal, Amund Hansen; Thomas, Sarina og Eikvil, Line. (2026).
Comparing Foundation Models for Medical Images: A Study on Limited Data and Generalization. Universitetet i Tromsø
Northern Lights Deep Learning Conference. 5–7. januar 2026. Tromsø.
Vis sammendrag
In this study we have investigated how vision foundation models, pretrained on different domains, compete with a specialized model for classification as a function of the size of the labeled training set of medical images. Furthermore, we have looked into the different models' ability to generalize to difficult cases. Our experiments are conducted for cardiac ultrasound images and the downstream task of view recognition. Still, this classification task is meant to serve as a demonstrative example, where we think that the findings should be transferable to other classification tasks and other domains. Through these experiments we found that the foundation models were able to beat the performance of our task-specific supervised model when labelled training data were limited. This was true even for models trained on natural images and when using the simple linear probing method to create a classifier. We observed that more domain-specific foundation models achieved an even higher performance with limited data. On the other hand, the more general models showed a greater ability to generalize and perform well on difficult, out-of-distribution cases. Still, for typical in-domain cases with sufficient labeled data, a task-specific ResNet model was competitive with the foundation models, while also being both smaller and faster.
Handegard, Nils Olav; Smith-Johnsen, Silje; Holmin, Arne Johannes; Mas, Cristian Muñoz; Utseth, Ingrid og Dondorp, Daniel. (2025).
Operationalizing and Testing Machine Learning Models for Acoustic Target Classification. IARIA
The Second International Conference on Technologies for Marine and Coastal Ecosystems. 25–29. oktober 2025. Barcelona.
Handegard, Nils Olav; Bildøy, Leif Edvard; Jacobsen, Stian; Johnsen, Espen; Korneliussen, Rolf og Utseth, Ingrid. (2025).
Implementing uncrewed surface vehicles in existing acoustic trawl surveys: data infrastructure, remote operating centre, edge computing, data compression and transfer, data quality monitoring, and automated target classification. ICES
WGFAST. 7–10. april 2025. Reykjavik.
Utseth, Ingrid; Sarmad, Muhammad; Eikvil, Line; Salberg, Arnt Børre; Ordonez, Alba og Brautaset, Olav. (2025).
Leveraging Data with Strong, Weak and No Labels in Marine Acoustics. SFI Visual Intelligence
Visual Intelligence Days 2025. 22–23. september 2025. Gardermoen.
Utseth, Ingrid; Ordonez, Alba; Sarmad, Muhammad; Salberg, Arnt Børre; Eikvil, Line; Brautaset, Olav og Handegard, Nils Olav. (2025).
Deep learning for marine acoustics: Leveraging data with strong, weak and no labels. SFI Visual Intelligence
Visual Intelligence Days 2025. 22–23. september 2025. Gardermoen.
Utseth, Ingrid; Brautaset, Olav; Eikvil, Line; Ordonez, Alba; Salberg, Arnt Børre; Sarmad, Muhammad; Holmin, Arne Johannes; Pala, Ahmet og Handegard, Nils Olav. (2025).
Deep learning methods for acoustic target classification. Iceland’s Marine and Freshwater Research Institute
Annual meeting of ICES Working Group on Fisheries Acoustics Science and Technology. 7–10. april 2025. Hafnarfjördur.
Handegard, Nils Olav; Holmin, Arne Johannes; Pala, Ahmet; Utseth, Ingrid og Johnsen, Espen. (2025).
Integrating and assessing machine learning acoustic target classification models for fish survey estimations.
ICES Journal of Marine Science. ISSN 1054-3139 1095-9289. Vol. 82. Issue 5.
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Scientific acoustic-trawl surveys collect data that are used to track fish and zooplankton populations over time. Most rely on manual annotation during acoustic target classification, but automated methods have been proposed. Here, we report on a framework for testing deep learning-based acoustic classification models and integrating them into the survey estimation process. The approach was applied to North Sea lesser sandeel (Ammodytes marinus) surveys from 2009 to 2024. Three U-Net-based models were tested: a baseline model, a depth-aware model, and a model trained with similarity-based sampling for the foreground class. A threshold based on the training years was applied to the models’ SoftMax outputs. The official sandeel estimation process was used as a starting point, replacing input data with model predictions. The biomass estimates were generally similar between manual annotations and model-based estimates, but variation existed across years. The baseline model misclassified a surface layer as sandeel and was prone to bottom contamination, causing larger deviations from official estimates. Discrepancies between the similarity-based model and the official estimates resulted from an incorrectly applied SoftMax threshold, leading to missing school interiors and indicating threshold sensitivity. Unlike traditional F1 score evaluations commonly used in image-based classification, our comparison assessed predictions in a survey-relevant context. The evaluation indicated that full automation was not yet feasible, but the predictions could be used as starting points for manual scrutiny. Annotating a subset of the data to refine thresholds or employing more advanced active learning approaches could enhance efficiency. These methods could enable faster, more consistent survey annotation.
Schulz, Trenton og Utseth, Ingrid. (2024).
Summary rock-paper-scissors robot 2024.
Norsk Regnesentral. DART/06/24. 26 S.
Vis sammendrag
We present a NAO robot that plays rock, paper, scissors with participants. The robot was an attempt to show how different aspects of computer science can be combined to make a fun and interesting interaction. We document the idea, how the different components work together, some events where we used the robot, and directions for future work.
Utseth, Ingrid; Vedal, Amund Hansen; Eikvil, Line og Waldeland, Anders U.. (2024).
Experiments with Foundation Models for Cardiac Ultrasound Images in Limited Data Scenarios. SFI Visual Intelligence
Visual Intelligence Days 2024. 24. september 2024. Jessheim.
Utseth, Ingrid; Vedal, Amund Hansen; Eikvil, Line og Waldeland, Anders U.. (2024).
Experiments with Foundation Models for Cardiac Ultrasound Images in Limited Data Scenarios. SFI Visual Intelligence
Visual Intelligence Days 2024. 24. september 2024. Jessheim.
Utseth, Ingrid; Vedal, Amund Hansen; Eikvil, Line og Waldeland, Anders U.. (2024).
Experiments with foundation models for cardiac ultrasound images.
Norsk Regnesentral. BAMJO/29/24. 37 S.
Utseth, Ingrid; Vedal, Amund Hansen og Eikvil, Line. (2024).
Detection of timing events in cardiac ultrasound.
Norsk Regnesentral. BAMJO/16/24. 24 S.
Schulz, Trenton og Utseth, Ingrid. (2024).
A Rock, Paper, Scissors Robot for Engaging Interest in Research.
S. 450-452.
Vis sammendrag
We present a NAO robot that plays rock, paper, scissors with participants. The robot was an attempt to show how different aspects of computer science can be combined to make a fun and interesting interaction. We document the idea, how the different components work together, some events where we used the robot, and directions for future work.
Schulz, Trenton og Utseth, Ingrid. (2024).
A Rock, Paper, Scissors Robot for Engaging Interest in Research. University of Swansea
HAI '24: the 12th International Conference on Human-Agent Interaction. 24–27. november 2024. Swansea.
Handegard, Nils Olav; Bildøy, Leif; Brautaset, Olav; Furmanek, Tomasz; Holmin, Arne Johannes; Utseth, Ingrid og Malde, Ketil. (2024).
Fisheries acoustics and deep learning.
International Conference on Marine Data and Information Systems - IMDIS. 27–29. mai 2024. Bergen.
Fuglerud, Kristin Skeide; Halbach, Till; Utseth, Ingrid og Waldeland, Anders U.. (2024).
Exploring the Use of AI for Enhanced Accessibility Testing of Web Solutions.
S. 453-460.
Handegard, Nils Olav; Bildøy, Leif; Brautaset, Olav; Furmanek, Tomasz; Holmin, Arne Johannes; Pala, Ahmet; Utseth, Ingrid og Malde, Ketil. (2024).
Analysing large amounts of echosounder data using cloud based data access combined with deep learning models. ICES
ICES Annual Science Conference. 9–12. september 2024. Gateshead.
Handegard, Nils Olav; Bildøy, Leif; Brautaset, Olav; Furmanek, Tomasz; Holmin, Arne Johannes; Utseth, Ingrid; Vatnehol, Sindre og Malde, Ketil. (2023).
A story about data extraction and deep learning applied to fishery acoustic data. ICES
From Echosounders to the Cloud: Transforming Acoustic Data to Information. 27–30. mars 2023. Portland. Maine. USA.
Brautaset, Olav; Utseth, Ingrid; Eikvil, Line; Salberg, Arnt-Børre og Handegard, Nils Olav. (2023).
Learning from weakly labelled marine acoustic data. Visual Intelligence
Visual Intelligence Days. 27–28. september 2023. Hotel Olavsgaard.
Brautaset, Olav; Utseth, Ingrid; Eikvil, Line; Salberg, Arnt-Børre og Handegard, Nils Olav. (2023).
Learning from weakly labelled marine acoustic data. Visual Intelligence
Visual Intelligence Days. 27–28. september 2023. Hotel Olavsgaard.
Handegard, Nils Olav; Tenningen, Maria; Bildøy, Leif; Corneliussen, Jon Even; Esmail, Kameran; Heinsdorf, Jens; Khodabandeloo, Babak; Korneliussen, Rolf; Kubilius, Rokas; Kvalvik, Liz Beate Kolstad; Osborg, Eirik Svoren; Pala, Ahmed; Pedersen, Geir; Rosen, Shale; Saltskår, Jostein; Schuster, Erik; Utseth, Ingrid og Westergerling, Eugenie Heliana Taraneh. (2023).
CRIMAC cruise report: Development of acoustic and optic methods for underwater target calssification - G.O. Sars 22.11 - 03.12 2022.
Havforskningsinstituttet. 2023 - 3. 51 S.
Vis sammendrag
The overarching objective of the survey is to collect data to support the CRIMAC activities and to collect data for the LoVe observatory. CRIMAC is a center of research-based innovation funded by the research council of Norway through their center for research-based innovation program (SFI). Sustainable, healthy food production and clean energy production for a growing population are important global goals, and CRIMAC will contribute to these by obtaining accurate underwater observations of gas, fish, nekton and other targets. The data will be used in conjunction with CRIMAC data from other surveys to build a reference data set for optical and acoustic target classification. The classification libraries will be used for developing methods and products toward the fishing industry and marine science. The survey was divided into two legs where leg one mainly focused on trawl instrumentation and data collection for behavioural studies on fish-trawl interactions. The main objectives of this part were to test in-trawl camera systems and data processing from such systems, test and develop trawl instrumentation and acoustic and optic monitoring of herring behaviour in relation to the trawl. The second leg of the survey focused mainly on broad band acoustic data, including sizing of fish using broad banded acoustics, noise estimation, calibration, time series consistency when changing to broad band acoustics, gas seep detection as well as performing the standard IMR LoVe transect.
Schulz, Trenton og Utseth, Ingrid. (2023).
Oppsummering: stein-saks-papir robot.
Norsk Regnesentral. DART/11/23. 27 S.
Løland, Anders og Utseth, Ingrid. (2023).
Forsker Ingrid har vært på tokt.
25. april 2023.
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Ingrid Utseth fra NR har vært på akustikktokt med Havforskningsinstituttet. Etter toktet sitter Ingrid igjen med et laaaangt bilde som kommer fra ekkoloddet til forskningsfartøyet Ingrid var på. Vi snakker om hvorfor og hvordan hun jobber med automatisk tolkning av slike data fra ekkolodd. Av Norsk Regnesentral med Anders Løland i studio. Produsent: Elin Ruhlin Gjuvsland.
Handegard, Nils Olav; Algrøy, Tonny; Eliassen, Inge Kristian; Forland, Tonje Nesse; Johnsen, Espen; Pedersen, Audun Oppedal; Pedersen, Geir; Tenningen, Maria og Utseth, Ingrid. (2023).
Centre for research based innovation in marine acoustic abundance estimation and backscatter classification (CRIMAC). SINTEF
Geilo Winter School. 22–27. januar 2023. Geilo.
Vis sammendrag
Objectives The primary objective of the SFI is to advance the frontiers in fisheries acoustic methodology and associated optical methods, and to apply such methods to 1) surveys for marine organisms, 2) fisheries, 3) aquaculture and 4) the energy sector.
Pala, Ahmet; Oleynik, Anna; Utseth, Ingrid og Handegard, Nils Olav. (2023).
Addressing class imbalance in deep learning for acoustic target classification.
ICES Journal of Marine Science. ISSN 1054-3139 1095-9289. Vol. 80. Issue 10. S. 2530-2544.
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Acoustic surveys provide important data for fisheries management. During the surveys, ship-mounted echo sounders send acoustic signals into the water and measure the strength of the reflection, so-called backscatter. Acoustic target classification (ATC) aims to identify backscatter signals by categorizing them into specific groups, e.g. sandeel, mackerel, and background (as bottom and plankton). Convolutional neural networks typically perform well for ATC but fail in cases where the background class is similar to the foreground class. In this study, we discuss how to address the challenge of class imbalance in the sampling of training and validation data for deep convolutional neural networks. The proposed strategy seeks to equally sample areas containing all different classes while prioritizing background data that have similar characteristics to the foreground class. We investigate the performance of the proposed sampling methodology for ATC using a previously published deep convolutional neural network architecture on sandeel data. Our results demonstrate that utilizing this approach enables accurate target classification even when dealing with imbalanced data. This is particularly relevant for pixel-wise semantic segmentation tasks conducted on extensive datasets. The proposed methodology utilizes state-of-the-art deep learning techniques and ensures a systematic approach to data balancing, avoiding ad hoc methods.
Halbach, Till; Waldeland, Anders U.; Utseth, Ingrid og Fuglerud, Kristin Skeide. (2023).
GB-prosjektet AI-basert UU-tilsyn.
Norsk Regnesentral. DART/06/23. 7 S.
Handegard, Nils Olav; Brautaset, Olav; Choi, Changkyu; Furmanek, Tomasz; Hestnes, Arne Johan; Johnsen, Espen; Ordonez, Alba; Utseth, Ingrid; Vatnehol, Sindre og Huse, Geir. (2022).
Developing and deploying machine learning methods for acoustic data. ICES
WGFAST - Working Group on Fisheries Acoustics Science and Technology. 25–28. april 2022. Online/La Somone.
Utseth, Ingrid; Ordonez, Alba; Eikvil, Line; Brautaset, Olav; Salberg, Arnt Børre og Handegard, Nils Olav. (2022).
Improving marine acoustic target classification with context information. International Council for the Exploration of the Sea
ICES Annual Science Conference 2022. 19–22. september 2022. Dublin.
Ordonez, Alba; Utseth, Ingrid; Brautaset, Olav; Korneliussen, Rolf og Handegard, Nils Olav. (2022).
Evaluation of echosounder data preparation strategies for modern machine learning models.
Fisheries Research. ISSN 0165-7836 1872-6763. Vol. 254.
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Fish stock assessment and management requires accurate estimates of fish abundance, which are typically derived from echosounder observations using acoustic target classification (ATC). Skilled operators are regularly assisted in classifying acoustic targets by software and there has been an increasing interest toward using machine learning to create improved tools. Recent studies have applied deep learning approaches to acoustic data, however, algorithm data-preparation strategies (influencing model output) are presently poorly understood and standardization is needed to enable collaborative research and management. For example, a common pre-processing technique is to resample backscatter data coming from echosounder measurements from the original resolution to a coarser resolution in the horizontal (time) and vertical (range) directions. Using data values derived from the volume backscattering coefficient obtained during the Norwegian sandeel survey, we investigate which resampling resolutions are suitable for ATC using a convolutional neural network trained to classify single values of backscatter data. This process is known as pixel-level semantic segmentation. Our results indicate that it is possible to downsample the data if important information related to acoustic characteristics is not smoothed out. We also show that the classification performance is improved when providing the network with contextual information relating to range. These findings will provide input to fisheries acoustic data standards and contribute to the on-going development of automated ATC methods.
Ordonez, Alba; Utseth, Ingrid; Eikvil, Line og Handegard, Nils Olav. (2021).
Using model averaging ensembles in semantic segmentation of marine echosounder data for acoustic classification of species. Norsk Forening for Bildebehandling og Maskinlæring
NOBIM 2021. 13–14. september 2021. Gardermoen.
Utseth, Ingrid; Ordonez, Alba; Eikvil, Line; Brautaset, Olav; Salberg, Arnt-Børre og Handegard, Nils Olav. (2021).
Improving marine acoustic target classification with context information. Visual Intelligence centre for research-based innovation
Visual Intelligence Days 2021. 19–20. oktober 2021. Oslo.
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The aim of the study was to investigate whether context information related to acoustic data resolution could improve automatic acoustic classification of species using echosounder observations.