Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/44919
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dc.contributor.authorVANHERLE, Bram-
dc.contributor.authorVAN REETH, Frank-
dc.contributor.authorMICHIELS, Nick-
dc.date.accessioned2024-12-23T13:35:00Z-
dc.date.available2024-12-23T13:35:00Z-
dc.date.issued2024-
dc.date.submitted2024-11-27T14:25:05Z-
dc.identifier.citationICLR 2024 Workshop on Data-centric Machine Learning Research (DMLR): Harnessing Momentum for Science, Vienna, Austria, 2024, May 11-
dc.identifier.urihttp://hdl.handle.net/1942/44919-
dc.description.abstractData augmentations are useful in closing the sim-to-real domain gap when training on synthetic data. This is because they widen the training data distribution, thus encouraging the model to generalize better to other domains. Many image augmentation techniques exist, parametrized by different settings, such as strength and probability. This leads to a large space of different possible augmentation policies. Some policies work better than others for overcoming the sim-to-real gap for specific datasets, and it is unclear why. This paper presents two different interpretable metrics that can be combined to predict how well a certain augmentation policy will work for a specific sim-to-real setting, focusing on object detection. We validate our metrics by training many models with different augmentation policies and showing a strong correlation with performance on real data. Additionally, we introduce GeneticAugment, a genetic programming method that can leverage these metrics to automatically design an augmentation policy for a specific dataset without needing to train a model.-
dc.language.isoen-
dc.subject.otherComputer Vision-
dc.subject.otherData Augmentation-
dc.subject.otherSim-to-Real-
dc.subject.otherSynthetic Data-
dc.titleGenetic Learning for Designing Sim-to-Real Data Augmentations-
dc.typeConference Material-
local.bibliographicCitation.conferencedate2024, May 11-
local.bibliographicCitation.conferencenameICLR 2024 Workshop on Data-centric Machine Learning Research (DMLR): Harnessing Momentum for Science-
local.bibliographicCitation.conferenceplaceVienna, Austria-
local.format.pages8-
local.bibliographicCitation.jcatC2-
local.type.refereedRefereed-
local.type.specifiedConference Material-
local.provider.typePdf-
local.uhasselt.internationalno-
item.fulltextWith Fulltext-
item.contributorVANHERLE, Bram-
item.contributorVAN REETH, Frank-
item.contributorMICHIELS, Nick-
item.fullcitationVANHERLE, Bram; VAN REETH, Frank & MICHIELS, Nick (2024) Genetic Learning for Designing Sim-to-Real Data Augmentations. In: ICLR 2024 Workshop on Data-centric Machine Learning Research (DMLR): Harnessing Momentum for Science, Vienna, Austria, 2024, May 11.-
item.accessRightsOpen Access-
Appears in Collections:Research publications
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