🤗 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.
Fler avsnitt av Daily Paper Cast
Visa alla avsnitt av Daily Paper CastDaily Paper Cast med Jingwen Liang, Gengyu Wang finns tillgänglig på flera plattformar. Informationen på denna sida kommer från offentliga podd-flöden.
