Test-Time Degradation Adaptation for Open-Set Image Restoration
In contrast to close-set scenarios that restore images from a predefined set of degradations, open-set image restoration aims to handle the unknown degradations that were unforeseen during the pretraining phase, which is less-touched as far as we know. This work study this challenging problem and re...
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Zusammenfassung: | In contrast to close-set scenarios that restore images from a predefined set
of degradations, open-set image restoration aims to handle the unknown
degradations that were unforeseen during the pretraining phase, which is
less-touched as far as we know. This work study this challenging problem and
reveal its essence as unidentified distribution shifts between the test and
training data. Recently, test-time adaptation has emerged as a fundamental
method to address this inherent disparities. Inspired by it, we propose a
test-time degradation adaptation framework for open-set image restoration,
which consists of three components, \textit{i.e.}, i) a pre-trained and
degradation-agnostic diffusion model for generating clean images, ii) a
test-time degradation adapter adapts the unknown degradations based on the
input image during the testing phase, and iii) the adapter-guided image
restoration guides the model through the adapter to produce the corresponding
clean image. Through experiments on multiple degradations, we show that our
method achieves comparable even better performance than those task-specific
methods. The code is available at
https://github.com/XLearning-SCU/2024-ICML-TAO. |
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DOI: | 10.48550/arxiv.2312.02197 |