2024
DOI: 10.1038/s41598-024-56409-3
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Data-driven simulations for training AI-based segmentation of neutron images

Pushkar S. Sathe,
Caitlyn M. Wolf,
Youngju Kim
et al.

Abstract: Neutron interferometry uniquely combines neutron imaging and scattering methods to enable characterization of multiple length scales from 1 nm to 10 µm. However, building, operating, and using such neutron imaging instruments poses constraints on the acquisition time and on the number of measured images per sample. Experiment time-constraints yield small quantities of measured images that are insufficient for automating image analyses using supervised artificial intelligence (AI) models. One approach alleviate… Show more

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