Hi there! Great work for setting up a diffusion benchmark for interesting inverse problems!
In this issue, I propose connection with DeepInverse to make use of the following features in DeepInverse:
Motivation
Reproducible research in inverse problems is accelerated by sharing ideas and methods across modalities, e.g. it's nice to see that diffusion methods proposed e.g. in MRI have been successfully applied in other scientific inverse problems. Along with deepinv/deepinv#990 (i.e. integrate inversebench into deepinverse), researchers from more communities can benefit from more baseline methods given an inverse problem, as well as more inverse problems given a reconstruction algorithm.
Hi there! Great work for setting up a diffusion benchmark for interesting inverse problems!
In this issue, I propose connection with DeepInverse to make use of the following features in DeepInverse:
Motivation
Reproducible research in inverse problems is accelerated by sharing ideas and methods across modalities, e.g. it's nice to see that diffusion methods proposed e.g. in MRI have been successfully applied in other scientific inverse problems. Along with deepinv/deepinv#990 (i.e. integrate inversebench into deepinverse), researchers from more communities can benefit from more baseline methods given an inverse problem, as well as more inverse problems given a reconstruction algorithm.