We study the problem of synthesizing a number of likely future frames from a single input image. In contrast to traditional methods that have tackled this problem in a deterministic or non-parametric way, we propose to model future frames in a probabilistic manner. Our probabilistic model makes it possible for us to sample and synthesize many possible future frames from a single input image. To synthesize realistic movement of objects, we propose a novel network structure, namely a Cross Convolutional Network; this network encodes image and motion information as feature maps and convolutional kernels, respectively. In experiments, our model performs well on synthetic data, such as 2D shapes and animated game sprites, and on real-world video...
We describe a probabilistic model for learning rich, distributed representations of image transforma...
International audienceThere is an inherent need for autonomous cars, drones, and other robots to ha...
We develop a theory for the temporal integration of visual motion motivated by psychophysical experi...
We study the problem of synthesizing a number of likely future frames from a single input image. In ...
© 2016 NIPS Foundation - All Rights Reserved. We study the problem of synthesizing a number of likel...
We present a novel deep learning architecture for probabilistic future prediction from video. We pre...
Human motion modelling is crucial in many areas such as computergraphics, vision and virtual reality...
Predicting the future in real-world settings, particularly from raw sensory observations such as ima...
While great strides have been made in using deep learning algorithms to solve supervised learning ta...
Recent developments in vision-based dynamics models have helped researchers achieve state-of-the-art...
Motivated by vision-based reinforcement learning (RL) problems, in particular Atari games from the r...
Deep neural networks are becoming central in several areas of computer vision. While there have been...
When given a single frame of the video, humans can not only interpret the content of the scene, but ...
For a robot to interact with its environment, it must perceive the world and understand how the worl...
When given a single frame of the video, humans can not only interpret the content of the scene, but ...
We describe a probabilistic model for learning rich, distributed representations of image transforma...
International audienceThere is an inherent need for autonomous cars, drones, and other robots to ha...
We develop a theory for the temporal integration of visual motion motivated by psychophysical experi...
We study the problem of synthesizing a number of likely future frames from a single input image. In ...
© 2016 NIPS Foundation - All Rights Reserved. We study the problem of synthesizing a number of likel...
We present a novel deep learning architecture for probabilistic future prediction from video. We pre...
Human motion modelling is crucial in many areas such as computergraphics, vision and virtual reality...
Predicting the future in real-world settings, particularly from raw sensory observations such as ima...
While great strides have been made in using deep learning algorithms to solve supervised learning ta...
Recent developments in vision-based dynamics models have helped researchers achieve state-of-the-art...
Motivated by vision-based reinforcement learning (RL) problems, in particular Atari games from the r...
Deep neural networks are becoming central in several areas of computer vision. While there have been...
When given a single frame of the video, humans can not only interpret the content of the scene, but ...
For a robot to interact with its environment, it must perceive the world and understand how the worl...
When given a single frame of the video, humans can not only interpret the content of the scene, but ...
We describe a probabilistic model for learning rich, distributed representations of image transforma...
International audienceThere is an inherent need for autonomous cars, drones, and other robots to ha...
We develop a theory for the temporal integration of visual motion motivated by psychophysical experi...