Magnetic resonance (MR) images collected in 2D scanning protocols typically
have large inter-slice spacing, resulting in high in-plane resolution but
reduced through-plane resolution. Super-resolution techniques can reduce the
inter-slice spacing of 2D scanned MR images, facilitating the downstream visual
experience and computer-aided diagnosis. However, most existing
super-resolution methods are trained at a fixed scaling ratio, which is
inconvenient in clinical settings where MR scanning may have varying
inter-slice spacings. To solve this issue, we propose Hierarchical Feature
Conditional Diffusion (HiFi-Diff)} for arbitrary reduction of MR inter-slice
spacing. Given two adjacent MR slices and the relative positional offset,
HiFi-Diff can iteratively convert a Gaussian noise map into any desired
in-between MR slice. Furthermore, to enable fine-grained conditioning, the
Hierarchical Feature Extraction (HiFE) module is proposed to hierarchically
extract conditional features and conduct element-wise modulation. Our
experimental results on the publicly available HCP-1200 dataset demonstrate the
high-fidelity super-resolution capability of HiFi-Diff and its efficacy in
enhancing downstream segmentation performance.Comment: not the tim