Normalization Equivariance for Arbitrary Backbones, with Application to Image Denoising
arXiv:2605.08193v2 Announce Type: replace-cross Abstract: Normalization Equivariance (NE) is a structural prior that improves robustness to distribution shift in image-to-image tasks. A function $f$ is normalization equivariant iff $f(a y + bmathbf{1}) = a f(y) + bmathbf{1}$ for all $a>0$…
