Chasing Better Deep Image Priors between Over- and Under-parameterization
Qiming Wu, Xiaohan Chen, Yifan Jiang, Zhangyang Wang

TL;DR
This paper introduces the concept of lottery image priors (LIP), sparse subnetworks within over-parameterized DNNs that outperform compact models in image restoration tasks, demonstrating high transferability and efficiency.
Contribution
It proposes the novel LIP framework inspired by the lottery ticket hypothesis, showing how to identify sparse subnetworks that match or exceed the performance of larger models in inverse image problems.
Findings
LIP subnetworks outperform deep decoders at similar sizes
LIP subnetworks maintain transferability across images and tasks
LIP extends to compressive sensing with GAN priors
Abstract
Deep Neural Networks (DNNs) are well-known to act as over-parameterized deep image priors (DIP) that regularize various image inverse problems. Meanwhile, researchers also proposed extremely compact, under-parameterized image priors (e.g., deep decoder) that are strikingly competent for image restoration too, despite a loss of accuracy. These two extremes push us to think whether there exists a better solution in the middle: between over- and under-parameterized image priors, can one identify "intermediate" parameterized image priors that achieve better trade-offs between performance, efficiency, and even preserving strong transferability? Drawing inspirations from the lottery ticket hypothesis (LTH), we conjecture and study a novel "lottery image prior" (LIP) by exploiting DNN inherent sparsity, stated as: given an over-parameterized DNN-based image prior, it will contain a sparse…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Advanced Vision and Imaging · 3D Shape Modeling and Analysis
