UGoDIT: Unsupervised Group Deep Image Prior Via Transferable Weights
Shijun Liang, Ismail R. Alkhouri, Siddhant Gautam, Qing Qu, Saiprasad Ravishankar

TL;DR
UGoDIT introduces an unsupervised deep image prior method that leverages transferable weights and minimal training data to effectively reconstruct images in medical and natural imaging tasks, outperforming traditional DIP methods.
Contribution
The paper proposes UGoDIT, a novel unsupervised approach that learns transferable weights with a shared encoder and multiple decoders, enabling high-quality image reconstruction with limited data.
Findings
Outperforms standalone DIP in convergence speed and quality
Achieves results comparable to SOTA diffusion and supervised models
Effective in medical and natural image recovery tasks
Abstract
Recent advances in data-centric deep generative models have led to significant progress in solving inverse imaging problems. However, these models (e.g., diffusion models (DMs)) typically require large amounts of fully sampled (clean) training data, which is often impractical in medical and scientific settings such as dynamic imaging. On the other hand, training-data-free approaches like the Deep Image Prior (DIP) do not require clean ground-truth images but suffer from noise overfitting and can be computationally expensive as the network parameters need to be optimized for each measurement set independently. Moreover, DIP-based methods often overlook the potential of learning a prior using a small number of sub-sampled measurements (or degraded images) available during training. In this paper, we propose UGoDIT, an Unsupervised Group DIP via Transferable weights, designed for the…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Generative Adversarial Networks and Image Synthesis · Functional Brain Connectivity Studies
MethodsDiffusion · Sparse Evolutionary Training
