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FetalDiffusion: Pose-Controllable 3D Fetal MRI Synthesis with Conditional Diffusion Model
April 2, 2024, 7:48 p.m. | Molin Zhang, Polina Golland, Patricia Ellen Grant, Elfar Adalsteinsson
cs.CV updates on arXiv.org arxiv.org
Abstract: The quality of fetal MRI is significantly affected by unpredictable and substantial fetal motion, leading to the introduction of artifacts even when fast acquisition sequences are employed. The development of 3D real-time fetal pose estimation approaches on volumetric EPI fetal MRI opens up a promising avenue for fetal motion monitoring and prediction. Challenges arise in fetal pose estimation due to limited number of real scanned fetal MR training images, hindering model generalization when the acquired …
abstract acquisition arxiv cs.cv development diffusion diffusion model eess.iv introduction mri quality real-time synthesis type
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