Learning Semantic-Aware Dynamics for Video Prediction

04/20/2021
by   Xinzhu Bei, et al.
24

We propose an architecture and training scheme to predict video frames by explicitly modeling dis-occlusions and capturing the evolution of semantically consistent regions in the video. The scene layout (semantic map) and motion (optical flow) are decomposed into layers, which are predicted and fused with their context to generate future layouts and motions. The appearance of the scene is warped from past frames using the predicted motion in co-visible regions; dis-occluded regions are synthesized with content-aware inpainting utilizing the predicted scene layout. The result is a predictive model that explicitly represents objects and learns their class-specific motion, which we evaluate on video prediction benchmarks.

READ FULL TEXT

page 1

page 2

page 5

page 7

page 8

page 13

research
12/02/2018

Disentangling Propagation and Generation for Video Prediction

Learning to predict future video frames is a challenging task. Recent ap...
research
10/12/2021

Fourier-based Video Prediction through Relational Object Motion

The ability to predict future outcomes conditioned on observed video fra...
research
11/25/2022

WALDO: Future Video Synthesis using Object Layer Decomposition and Parametric Flow Prediction

This paper presents WALDO (WArping Layer-Decomposed Objects), a novel ap...
research
01/17/2019

Disentangling Video with Independent Prediction

We propose an unsupervised variational model for disentangling video int...
research
10/22/2021

Wide and Narrow: Video Prediction from Context and Motion

Video prediction, forecasting the future frames from a sequence of input...
research
08/15/2021

Occlusion-Aware Video Object Inpainting

Conventional video inpainting is neither object-oriented nor occlusion-a...
research
03/03/2021

MotionRNN: A Flexible Model for Video Prediction with Spacetime-Varying Motions

This paper tackles video prediction from a new dimension of predicting s...

Please sign up or login with your details

Forgot password? Click here to reset