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DA-Flow: Degradation-Aware Optical Flow Estimation with Diffusion Models
Episode 1676

DA-Flow: Degradation-Aware Optical Flow Estimation with Diffusion Models

Daily Paper Cast

March 26, 202620m 42s

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Show Notes

🤗 Upvotes: 36 | cs.CV

Authors:
Jaewon Min, Jaeeun Lee, Yeji Choi, Paul Hyunbin Cho, Jin Hyeon Kim, Tae-Young Lee, Jongsik Ahn, Hwayeong Lee, Seonghyun Park, Seungryong Kim

Title:
DA-Flow: Degradation-Aware Optical Flow Estimation with Diffusion Models

Arxiv:
http://arxiv.org/abs/2603.23499v1

Abstract:
Optical flow models trained on high-quality data often degrade severely when confronted with real-world corruptions such as blur, noise, and compression artifacts. To overcome this limitation, we formulate Degradation-Aware Optical Flow, a new task targeting accurate dense correspondence estimation from real-world corrupted videos. Our key insight is that the intermediate representations of image restoration diffusion models are inherently corruption-aware but lack temporal awareness. To address this limitation, we lift the model to attend across adjacent frames via full spatio-temporal attention, and empirically demonstrate that the resulting features exhibit zero-shot correspondence capabilities. Based on this finding, we present DA-Flow, a hybrid architecture that fuses these diffusion features with convolutional features within an iterative refinement framework. DA-Flow substantially outperforms existing optical flow methods under severe degradation across multiple benchmarks.