Image Reconstruction via Deep Image Prior Subspaces
Abstract
Deep learning has been widely used for solving image reconstruction tasks but its deployability has been held back due to the shortage of high-quality paired training data. Unsupervised learning methods, e.g., deep image prior (DIP), naturally fill this gap, but bring a host of new issues: the susceptibility to overfitting due to a lack of robust early stopping strategies and unstable convergence. We present a novel approach to tackle these issues by restricting DIP optimisation to a sparse linear subspace of its parameters, employing a synergy of dimensionality reduction techniques and second order optimisation methods. The low-dimensionality of the subspace reduces DIP's tendency to fit noise and allows the use of stable second order optimisation methods, e.g., natural gradient descent or L-BFGS. Experiments across both image restoration and tomographic tasks of different geometry and ill-posedness show that second order optimisation within a low-dimensional subspace is favourable in terms of optimisation stability to reconstruction fidelity trade-off.
Cite
Text
Barbano et al. "Image Reconstruction via Deep Image Prior Subspaces." Transactions on Machine Learning Research, 2024.Markdown
[Barbano et al. "Image Reconstruction via Deep Image Prior Subspaces." Transactions on Machine Learning Research, 2024.](https://mlanthology.org/tmlr/2024/barbano2024tmlr-image/)BibTeX
@article{barbano2024tmlr-image,
title = {{Image Reconstruction via Deep Image Prior Subspaces}},
author = {Barbano, Riccardo and Antoran, Javier and Leuschner, Johannes and Hernández-Lobato, José Miguel and Jin, Bangti and Kereta, Zeljko},
journal = {Transactions on Machine Learning Research},
year = {2024},
url = {https://mlanthology.org/tmlr/2024/barbano2024tmlr-image/}
}