Edit2Restore:Few-Shot Image Restoration via Parameter-Efficient Adaptation of Pre-trained Editing Models
M. Ak{\i}n Y{\i}lmaz, Ahmet Bilican, Burak Can Biner, A. Murat Tekalp

TL;DR
This paper demonstrates that pre-trained image editing models can be efficiently adapted for various image restoration tasks using few examples and parameter-efficient fine-tuning, achieving high perceptual quality with minimal data.
Contribution
It introduces a method to adapt large pre-trained editing models for multiple restoration tasks with few-shot learning using LoRA adapters and text prompts.
Findings
Effective multi-task restoration with 16-128 images per task
Unified adapter handles multiple degradations like denoising and dehazing
High perceptual quality achieved with minimal data
Abstract
Image restoration has traditionally required training specialized models on thousands of paired examples per degradation type. We challenge this paradigm by demonstrating that powerful pre-trained text-conditioned image editing models can be efficiently adapted for multiple restoration tasks through parameter-efficient fine-tuning with remarkably few examples. Our approach fine-tunes LoRA adapters on FLUX.1 Kontext, a state-of-the-art 12B parameter flow matching model for image-to-image translation, using only 16-128 paired images per task, guided by simple text prompts that specify the restoration operation. Unlike existing methods that train specialized restoration networks from scratch with thousands of samples, we leverage the rich visual priors already encoded in large-scale pre-trained editing models, dramatically reducing data requirements while maintaining high perceptual…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Image Enhancement Techniques · Advanced Image Processing Techniques
