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Zero-shot Bias Correction: Efficient MR Image Inhomogeneity Reduction Without Any Data

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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.

Hongxu Yang, Edina Timko, Brice Fernandez• 2025

Related benchmarks

TaskDatasetResultRank
Inhomogeneity CorrectionADNI
CV (GM)14.9
3
Inhomogeneity CorrectionIXI
CV (GM)0.117
3
Inhomogeneity CorrectionOASIS
CV GM0.304
3
Inhomogeneity CorrectionDX-W (Dixon-water)
CV (BLD)0.118
3
Inhomogeneity CorrectionDixon fat
CV (BLD)0.469
3
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