Fusing Explicit and Implicit Flow for Optical Flow Estimation
Hyunse Yoon, Seongmin Lee, Sanghoon Lee
-
SPS
IEEE Members: $11.00
Non-members: $15.00
Estimating optical flow for large movement remains a challenging issue due to inconsistency in features between frames. To resolve this challenge, we propose a novel sequence-based deep learning network that jointly trains explicit flow and implicit flow to accurately estimate optical flow. To do this, we implemented three submodules: explicit flow embedder, implicit flow embedder, and flow fusion network. Explicit flow embedder learns the pair-wise correlation between visible pixels based on the spatial attention made per image. Implicit flow embedder learns implicit flow based on the temporal context of motion from all frames in the sequence. To effectively learn the implicit flow, we give a longer sequence of frames as input. Flow fusion network fuses features from explicit and implicit embedder to output the final optical flow. Through extensive experiments, our model demonstrates its robustness against the large motion while providing accurate flow estimation for pixels without pairs in the next frame.