SSCM: A Spatial-Semantic Consistent Model for Multi-Contrast MRI Super-Resolution
By: Xiaoman Wu , Lubin Gan , Siying Wu and more
Potential Business Impact:
Makes blurry MRI scans sharp and clear.
Multi-contrast Magnetic Resonance Imaging super-resolution (MC-MRI SR) aims to enhance low-resolution (LR) contrasts leveraging high-resolution (HR) references, shortening acquisition time and improving imaging efficiency while preserving anatomical details. The main challenge lies in maintaining spatial-semantic consistency, ensuring anatomical structures remain well-aligned and coherent despite structural discrepancies and motion between the target and reference images. Conventional methods insufficiently model spatial-semantic consistency and underuse frequency-domain information, which leads to poor fine-grained alignment and inadequate recovery of high-frequency details. In this paper, we propose the Spatial-Semantic Consistent Model (SSCM), which integrates a Dynamic Spatial Warping Module for inter-contrast spatial alignment, a Semantic-Aware Token Aggregation Block for long-range semantic consistency, and a Spatial-Frequency Fusion Block for fine structure restoration. Experiments on public and private datasets show that SSCM achieves state-of-the-art performance with fewer parameters while ensuring spatially and semantically consistent reconstructions.
Similar Papers
A Diffusion-Driven Temporal Super-Resolution and Spatial Consistency Enhancement Framework for 4D MRI imaging
Image and Video Processing
Makes blurry heart scans clear and smooth.
Decoupling Multi-Contrast Super-Resolution: Pairing Unpaired Synthesis with Implicit Representations
CV and Pattern Recognition
Makes blurry MRI scans sharp and clear.
Unaligned RGB Guided Hyperspectral Image Super-Resolution with Spatial-Spectral Concordance
CV and Pattern Recognition
Makes blurry pictures sharp using color information.