Unsupervised Cumulative Domain Adaptation for Foggy Scene Optical Flow

03/14/2023
by   Hanyu Zhou, et al.
0

Optical flow has achieved great success under clean scenes, but suffers from restricted performance under foggy scenes. To bridge the clean-to-foggy domain gap, the existing methods typically adopt the domain adaptation to transfer the motion knowledge from clean to synthetic foggy domain. However, these methods unexpectedly neglect the synthetic-to-real domain gap, and thus are erroneous when applied to real-world scenes. To handle the practical optical flow under real foggy scenes, in this work, we propose a novel unsupervised cumulative domain adaptation optical flow (UCDA-Flow) framework: depth-association motion adaptation and correlation-alignment motion adaptation. Specifically, we discover that depth is a key ingredient to influence the optical flow: the deeper depth, the inferior optical flow, which motivates us to design a depth-association motion adaptation module to bridge the clean-to-foggy domain gap. Moreover, we figure out that the cost volume correlation shares similar distribution of the synthetic and real foggy images, which enlightens us to devise a correlation-alignment motion adaptation module to distill motion knowledge of the synthetic foggy domain to the real foggy domain. Note that synthetic fog is designed as the intermediate domain. Under this unified framework, the proposed cumulative adaptation progressively transfers knowledge from clean scenes to real foggy scenes. Extensive experiments have been performed to verify the superiority of the proposed method.

READ FULL TEXT

page 1

page 3

page 4

page 5

page 6

page 7

page 8

research
03/24/2023

Unsupervised Hierarchical Domain Adaptation for Adverse Weather Optical Flow

Optical flow estimation has made great progress, but usually suffers fro...
research
01/23/2023

GyroFlow+: Gyroscope-Guided Unsupervised Deep Homography and Optical Flow Learning

Existing homography and optical flow methods are erroneous in challengin...
research
04/04/2020

Optical Flow in Dense Foggy Scenes using Semi-Supervised Learning

In dense foggy scenes, existing optical flow methods are erroneous. This...
research
03/05/2023

HairStep: Transfer Synthetic to Real Using Strand and Depth Maps for Single-View 3D Hair Modeling

In this work, we tackle the challenging problem of learning-based single...
research
09/04/2023

StereoFlowGAN: Co-training for Stereo and Flow with Unsupervised Domain Adaptation

We introduce a novel training strategy for stereo matching and optical f...
research
11/18/2018

An Efficient Optical Flow Based Motion Detection Method for Non-stationary Scenes

Real-time motion detection in non-stationary scenes is a difficult task ...
research
11/01/2018

Asymmetric Bilateral Phase Correlation for Optical Flow Estimation in the Frequency Domain

We address the problem of motion estimation in images operating in the f...

Please sign up or login with your details

Forgot password? Click here to reset