Inversion by Direct Iteration: An Alternative to Denoising Diffusion for Image Restoration
Mauricio Delbracio, Peyman Milanfar

TL;DR
Inversion by Direct Iteration (InDI) offers a new iterative approach for supervised image restoration that improves image quality gradually without requiring explicit knowledge of the degradation process, outperforming traditional regression methods.
Contribution
InDI introduces a novel iterative formulation for image restoration that avoids the regression to the mean effect and does not need degradation model knowledge, applicable to various restoration tasks.
Findings
Produces more realistic and detailed images than existing methods.
Effectively handles multiple image degradation types.
Achieves superior perceptual quality in restoration results.
Abstract
Inversion by Direct Iteration (InDI) is a new formulation for supervised image restoration that avoids the so-called "regression to the mean" effect and produces more realistic and detailed images than existing regression-based methods. It does this by gradually improving image quality in small steps, similar to generative denoising diffusion models. Image restoration is an ill-posed problem where multiple high-quality images are plausible reconstructions of a given low-quality input. Therefore, the outcome of a single step regression model is typically an aggregate of all possible explanations, therefore lacking details and realism. The main advantage of InDI is that it does not try to predict the clean target image in a single step but instead gradually improves the image in small steps, resulting in better perceptual quality. While generative denoising diffusion models also work in…
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Taxonomy
TopicsPhotoacoustic and Ultrasonic Imaging · Image and Signal Denoising Methods · Seismic Imaging and Inversion Techniques
MethodsDiffusion
