English

SVD-DIP: Overcoming the Overfitting Problem in DIP-based CT Reconstruction

Image and Video Processing 2023-05-16 v3 Computer Vision and Pattern Recognition

Abstract

The deep image prior (DIP) is a well-established unsupervised deep learning method for image reconstruction; yet it is far from being flawless. The DIP overfits to noise if not early stopped, or optimized via a regularized objective. We build on the regularized fine-tuning of a pretrained DIP, by adopting a novel strategy that restricts the learning to the adaptation of singular values. The proposed SVD-DIP uses ad hoc convolutional layers whose pretrained parameters are decomposed via the singular value decomposition. Optimizing the DIP then solely consists in the fine-tuning of the singular values, while keeping the left and right singular vectors fixed. We thoroughly validate the proposed method on real-measured μ\muCT data of a lotus root as well as two medical datasets (LoDoPaB and Mayo). We report significantly improved stability of the DIP optimization, by overcoming the overfitting to noise.

Keywords

Cite

@article{arxiv.2303.15748,
  title  = {SVD-DIP: Overcoming the Overfitting Problem in DIP-based CT Reconstruction},
  author = {Marco Nittscher and Michael Lameter and Riccardo Barbano and Johannes Leuschner and Bangti Jin and Peter Maass},
  journal= {arXiv preprint arXiv:2303.15748},
  year   = {2023}
}
R2 v1 2026-06-28T09:37:16.430Z