January 10, Tuesday
12:00 – 13:00
In this talk we focus on these problems for the simplest restoration task of natural image denoising, where the goal is to estimate a clean natural image, given a noise-corrupted version of it.
We propose a statistical framework and a non-parametric computational approach to study these questions: what is optimal natural image denoising ? what are its fundamental lower bounds, and how far are current algorithms from optimality ?
As we shall see, answers to these questions involve both computational limitations, information-statistical issues and a fundamental property of natural images - scale invariance. Their combination allows us to give a ballpark estimate on the best achievable denoising, and to suggest directions for potential improvements of current algorithms.
Joint work with Anat Levin, Fredo Durand and Bill Freeman.