Title
Deep multi-scale video prediction beyond mean square error
Abstract
Learning to predict future images from a video sequence involves the construction of an internal representation that models the image evolution accurately, and therefore, to some degree, its content and dynamics. This is why pixel-space video prediction may be viewed as a promising avenue for unsupervised feature learning. In addition, while optical flow has been a very studied problem in computer vision for a long time, future frame prediction is rarely approached. Still, many vision applications could benefit from the knowledge of the next frames of videos, that does not require the complexity of tracking every pixel trajectories. In this work, we train a convolutional network to generate future frames given an input sequence. To deal with the inherently blurry predictions obtained from the standard Mean Squared Error (MSE) loss function, we propose three different and complementary feature learning strategies: a multi-scale architecture, an adversarial training method, and an image gradient difference loss function. We compare our predictions to different published results based on recurrent neural networks on the UCF101 dataset
Year
Venue
Field
2015
international conference on learning representations
Computer vision,Image gradient,Computer science,Recurrent neural network,Mean squared error,Artificial intelligence,Pixel,Optical flow,Feature learning,Machine learning
DocType
Volume
Citations 
Journal
abs/1511.05440
224
PageRank 
References 
Authors
6.49
15
3
Search Limit
100224
Name
Order
Citations
PageRank
Michaël Mathieu11915151.59
Camille Couprie2133774.61
Yann LeCun3260903771.21