Zero-shot Bias Correction: Efficient MR Image Inhomogeneity Reduction Without Any Data
About
In recent years, deep neural networks for image inhomogeneity reduction have shown promising results. However, current methods with (un)supervised solutions require preparing a training dataset, which is expensive and laborious for data collection. In this work, we demonstrate a novel zero-shot deep neural networks, which requires no data for pre-training and dedicated assumption of the bias field. The designed light-weight CNN enables an efficient zero-shot adaptation for bias-corrupted image correction. Our method provides a novel solution to mitigate the biased corrupted image as iterative homogeneity refinement, which therefore ensures the considered issue can be solved easier with stable convergence of zero-shot optimization. Extensive comparison on different datasets show that the proposed method performs better than current data-free N4 methods in both efficiency and accuracy.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Inhomogeneity Correction | ADNI | CV (GM)14.9 | 3 | |
| Inhomogeneity Correction | IXI | CV (GM)0.117 | 3 | |
| Inhomogeneity Correction | OASIS | CV GM0.304 | 3 | |
| Inhomogeneity Correction | DX-W (Dixon-water) | CV (BLD)0.118 | 3 | |
| Inhomogeneity Correction | Dixon fat | CV (BLD)0.469 | 3 |