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UnSCAR: Universal, Scalable, Controllable, and Adaptable Image Restoration

About

Universal image restoration aims to recover clean images from arbitrary real-world degradations using a single inference model. Despite significant progress, existing all-in-one restoration networks do not scale to multiple degradations. As the number of degradations increases, training becomes unstable, models grow excessively large, and performance drops across both seen and unseen domains. In this work, we show that scaling universal restoration is fundamentally limited by interference across degradations during joint learning, leading to catastrophic task forgetting. To address this challenge, we introduce a unified inference pipeline with a multi-branch mixture-of-experts architecture that decomposes restoration knowledge across specialized task-adaptable experts. Our approach enables scalable learning (over sixteen degradations), adapts and generalizes robustly to unseen domains, and supports user-controllable restoration across degradations. Beyond achieving superior performance across benchmarks, this work establishes a new design paradigm for scalable and controllable universal image restoration.

Debabrata Mandal, Soumitri Chattopadhyay, Yujie Wang, Marc Niethammer, Praneeth Chakravarthula• 2026

Related benchmarks

TaskDatasetResultRank
Low-light Image EnhancementLOL
PSNR22.51
162
InpaintingCelebA
PSNR27.78
38
DeshadowingSRD
PSNR31.32
29
Raindrop RemovalRainDrop
PSNR24.03
26
DehazingRESIDE--
25
Low-light Image EnhancementSony-Total-Dark
PSNR21.92
22
Defocus DeblurringLSD
PSNR23.62
18
DesnowingSRRS
PSNR31.39
8
Image RestorationHaze+Snow
PSNR21.96
8
Image RestorationLow-Blur
PSNR20.59
8
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