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Efficient Diffusion-Driven Corruption Editor for Test-Time Adaptation (2403.10911v3)

Published 16 Mar 2024 in cs.CV

Abstract: Test-time adaptation (TTA) addresses the unforeseen distribution shifts occurring during test time. In TTA, performance, memory consumption, and time consumption are crucial considerations. A recent diffusion-based TTA approach for restoring corrupted images involves image-level updates. However, using pixel space diffusion significantly increases resource requirements compared to conventional model updating TTA approaches, revealing limitations as a TTA method. To address this, we propose a novel TTA method that leverages an image editing model based on a latent diffusion model (LDM) and fine-tunes it using our newly introduced corruption modeling scheme. This scheme enhances the robustness of the diffusion model against distribution shifts by creating (clean, corrupted) image pairs and fine-tuning the model to edit corrupted images into clean ones. Moreover, we introduce a distilled variant to accelerate the model for corruption editing using only 4 network function evaluations (NFEs). We extensively validated our method across various architectures and datasets including image and video domains. Our model achieves the best performance with a 100 times faster runtime than that of a diffusion-based baseline. Furthermore, it is three times faster than the previous model updating TTA method that utilizes data augmentation, making an image-level updating approach more feasible.

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Authors (6)
  1. Yeongtak Oh (5 papers)
  2. Jonghyun Lee (34 papers)
  3. Jooyoung Choi (21 papers)
  4. Dahuin Jung (22 papers)
  5. Uiwon Hwang (14 papers)
  6. Sungroh Yoon (163 papers)
Citations (2)
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