Identity-preserving Distillation Sampling by Fixed-Point Iterator
  • Kim, SeonHwa
  • Kim, Jiwon
  • Park, Soobin
  • Ahn, Donghoon
  • Kang, Jiwon
  • ... Cha, Eunju
  • 외 2명
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초록

Score distillation sampling (SDS) demonstrates a powerful capability for text-conditioned 2D image and 3D object generation by distilling the knowledge from learned score functions. However, SDS often suffers from blurriness caused by noisy gradients. When SDS meets the image editing, such degradations can be reduced by adjusting bias shifts using reference pairs, but the de-biasing techniques are still corrupted by erroneous gradients. To this end, we introduce Identity-preserving Distillation Sampling (IDS), which compensates for the gradient leading to undesired changes in the results. Based on the analysis that these errors come from the text-conditioned scores, a new regularization technique, called fixed-point iterative regularization (FPR), is proposed to modify the score itself, driving the preservation of the identity even including poses and structures. Thanks to a self-correction by FPR, the proposed method provides clear and unambiguous representations corresponding to the given prompts in image-to-image editing and editable neural radiance field (NeRF). The structural consistency between the source and the edited data is obviously maintained compared to other state-of-the-art methods. Our code is https://github.com/shhh0620/IDS

제목
Identity-preserving Distillation Sampling by Fixed-Point Iterator
저자
Kim, SeonHwaKim, JiwonPark, SoobinAhn, DonghoonKang, JiwonKim, SeungryongJin, Kyong HwanCha, Eunju
DOI
10.1109/CVPR52734.2025.01038
발행일
2025-08
유형
Conference Paper
저널명
Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition
페이지
11115 ~ 11124