AI RESEARCH

Enhancing Ultra-low-field MRI with Segmentation-guided Adversarial Learning

arXiv CS.CV

ArXi:2605.28016v1 Announce Type: new Ultra-low-field (ULF) MRI offers portable and low-cost imaging but suffers from poor image quality. To address this, we present our submission to the 2025 ULF Enhancement Challenge (ULF-EnC), where the goal is to synthesise high-field-like MRIs from 64 mT scans. Our pipeline enhances ULF MRI through a combination of anatomical conditioning and model ensembling. We first generate tissue segmentation priors using a Swin UNETR trained solely on challenge-provided data.