Unfolding High-order Correlations for Interpretable Multi-contrast MRI Super-resolution
Deep unfolding network has gained significant attention for magnetic resonance imaging super-resolution (MRI SR) due to its performance and interpretability. However, 1) existing methods predominantly focus on cross-contrast correlations while neglecting high-order correlations embedded within spatially adjacent slices in volumetric MRI data. 2) Their degradation models are optimized via the proximal gradient algorithm (PGA) that relies on manually designed hyperparameters (e.g., step size), oft
