AI RESEARCH

Provably Contractive and High-Quality Denoisers for Convergent Restoration

arXiv CS.CV

ArXi:2603.26168v1 Announce Type: new Image restoration, the recovery of clean images from degraded measurements, has applications in various domains like surveillance, defense, and medical imaging. Despite achieving state-of-the-art (SOTA) restoration performance, existing convolutional and attention-based networks lack stability guarantees under minor shifts in input, exposing a robustness accuracy trade-off. We develop provably contractive (global Lipschitz $< 1$) denoiser networks that considerably reduce this gap.