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arxiv: 2403.10374 · v1 · pith:NAMIFAUXnew · submitted 2024-03-15 · 📡 eess.IV · cs.CV

Overcoming Distribution Shifts in Plug-and-Play Methods with Test-Time Training

classification 📡 eess.IV cs.CV
keywords modelspnp-ttttrainingdistributionimagelearnedmethodsdata
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Plug-and-Play Priors (PnP) is a well-known class of methods for solving inverse problems in computational imaging. PnP methods combine physical forward models with learned prior models specified as image denoisers. A common issue with the learned models is that of a performance drop when there is a distribution shift between the training and testing data. Test-time training (TTT) was recently proposed as a general strategy for improving the performance of learned models when training and testing data come from different distributions. In this paper, we propose PnP-TTT as a new method for overcoming distribution shifts in PnP. PnP-TTT uses deep equilibrium learning (DEQ) for optimizing a self-supervised loss at the fixed points of PnP iterations. PnP-TTT can be directly applied on a single test sample to improve the generalization of PnP. We show through simulations that given a sufficient number of measurements, PnP-TTT enables the use of image priors trained on natural images for image reconstruction in magnetic resonance imaging (MRI).

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