Boundary estimation in images and videos has been a very active topic of
research, and organizing visual information into boundaries and segments is
believed to be a corner stone of visual perception. While prior work has
focused on estimating boundaries for observed frames, our work aims at
predicting boundaries of future unobserved frames. This requires our model to
learn about the fate of boundaries and corresponding motion patterns --
including a notion of "intuitive physics". We experiment on natural video
sequences along with synthetic sequences with deterministic physics-based and
agent-based motions. While not being our primary goal, we also show that fusion
of RGB and boundary prediction leads to improved RGB predictions.Comment: Accepted in the AAAI Conference for Artificial Intelligence, 201