Learning Temporal Transformations From Time-Lapse Videos

08/27/2016
by   Yipin Zhou, et al.
0

Based on life-long observations of physical, chemical, and biologic phenomena in the natural world, humans can often easily picture in their minds what an object will look like in the future. But, what about computers? In this paper, we learn computational models of object transformations from time-lapse videos. In particular, we explore the use of generative models to create depictions of objects at future times. These models explore several different prediction tasks: generating a future state given a single depiction of an object, generating a future state given two depictions of an object at different times, and generating future states recursively in a recurrent framework. We provide both qualitative and quantitative evaluations of the generated results, and also conduct a human evaluation to compare variations of our models.

READ FULL TEXT

page 5

page 10

page 11

page 12

page 13

page 14

research
01/27/2018

Image2GIF: Generating Cinemagraphs using Recurrent Deep Q-Networks

Given a still photograph, one can imagine how dynamic objects might move...
research
12/05/2019

Zero-Shot Generation of Human-Object Interaction Videos

Generation of videos of complex scenes is an important open problem in c...
research
12/03/2018

Towards Accurate Generative Models of Video: A New Metric & Challenges

Recent advances in deep generative models have lead to remarkable progre...
research
10/06/2019

Structured Object-Aware Physics Prediction for Video Modeling and Planning

When humans observe a physical system, they can easily locate objects, u...
research
03/04/2019

VideoFlow: A Flow-Based Generative Model for Video

Generative models that can model and predict sequences of future events ...
research
05/16/2023

Understanding 3D Object Interaction from a Single Image

Humans can easily understand a single image as depicting multiple potent...

Please sign up or login with your details

Forgot password? Click here to reset