Tölle, MalteMalteTölleLaves, Max-HeinrichMax-HeinrichLavesSchlaefer, AlexanderAlexanderSchlaefer2024-04-032024-04-032021-07Proceedings of Machine Learning Research 143: 745-760 (2021)https://hdl.handle.net/11420/46793Exploiting the deep image prior property of convolutional auto-encoder networks is especially interesting for medical image processing as it avoids hallucinations by omitting supervised learning. Its spectral bias towards lower frequencies makes it suitable for inverse image problems such as denoising and super-resolution, but manual early stopping has to be applied to act as a low-pass filter. In this paper, we present a novel Bayesian approach to deep image prior using mean-field variational inference. This allows for uncertainty quantification on a per-pixel level and, given the right prior distribution on the network weights, omits the need for early stopping. We optimize the parameters of the weight prior towards reconstruction accuracy using Bayesian optimization with Gaussian Process regression. We evaluate our approach on different inverse tasks on a variety of modalities and demonstrate that an optimized weight prior outperforms former state-of-the-art Bayesian deep image prior approaches. We show that a badly selected prior leads to worse accuracy and calibration and that it is sufficient to optimize the weight prior parameter per task domain.en2640-3498Proceedings of Machine Learning Research2021745760Microtome PublishingDeep learningHallucinationVariational inferenceComputer SciencesTechnologyMedicine, HealthA mean-field variational inference approach to deep image prior for inverse problems in medical imagingConference PaperConference Paper