Deep Equilibrium Architectures for Inverse Problems in Imaging
About
Recent efforts on solving inverse problems in imaging via deep neural networks use architectures inspired by a fixed number of iterations of an optimization method. The number of iterations is typically quite small due to difficulties in training networks corresponding to more iterations; the resulting solvers cannot be run for more iterations at test time without incurring significant errors. This paper describes an alternative approach corresponding to an infinite number of iterations, yielding a consistent improvement in reconstruction accuracy above state-of-the-art alternatives and where the computational budget can be selected at test time to optimize context-dependent trade-offs between accuracy and computation. The proposed approach leverages ideas from Deep Equilibrium Models, where the fixed-point iteration is constructed to incorporate a known forward model and insights from classical optimization-based reconstruction methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Sparse-View CT Reconstruction | (test) | SNR (dB)35.26 | 14 | |
| Image Reconstruction | MRI Set1 (10% sampling) | SNR (dB)24.1 | 7 | |
| Image Reconstruction | MRI Set1 20% sampling | SNR (dB)27.41 | 7 | |
| Image Reconstruction | MRI Set2 (10% sampling) | SNR (dB)27.1 | 7 |