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Learn2Reg 2024: New Benchmark Datasets Driving Progress on New Challenges
Tipo de publicação: Artigo
Citação:
Publication status: Published
Journal: Melba
Volume: Volume 3
Ano: 2025
Mês: December
Páginas: 775-791
DOI: https://doi.org/10.59275/j.melba.2025-gc8c
Resumo: Medical image registration is critical for clinical applications, and fair benchmarking of different methods is essential for monitoring ongoing progress in the field. To date, the Learn2Reg 2020-2023 challenges have released several complementary datasets and established metrics for evaluations. Building on this foundation, the 2024 edition expands the challenge’s scope to cover a wider range of registration scenarios, particularly in terms of modality diversity and task complexity, by introducing three new tasks, including large-scale multi-modal registration and unsupervised inter-subject brain registration, as well as the first microscopy-focused benchmark within Learn2Reg. The new datasets also inspired new method developments, including invertibility constraints, pyramid features, keypoints alignment and instance optimisation
Palavras-chave: (Bio-) Medical Image Registration, Data Challenges
Autores Hansen, Lasse
Wachinger, Christian
Wodzinski, Marek
Müller, Henning
Brudfors, Mikael
Wells, William M.
Carass, Aaron
Dorent, Reuben
Hering, Alessa
Heinrich, Mattias
Adicionado por: []
Total mark: 0
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