Learning to Linearize Under Uncertainty
Computer Vision and Pattern Recognition
2015-09-11 v2
Abstract
Training deep feature hierarchies to solve supervised learning tasks has achieved state of the art performance on many problems in computer vision. However, a principled way in which to train such hierarchies in the unsupervised setting has remained elusive. In this work we suggest a new architecture and loss for training deep feature hierarchies that linearize the transformations observed in unlabeled natural video sequences. This is done by training a generative model to predict video frames. We also address the problem of inherent uncertainty in prediction by introducing latent variables that are non-deterministic functions of the input into the network architecture.
Cite
@article{arxiv.1506.03011,
title = {Learning to Linearize Under Uncertainty},
author = {Ross Goroshin and Michael Mathieu and Yann LeCun},
journal= {arXiv preprint arXiv:1506.03011},
year = {2015}
}
Comments
To appear at NIPS 2015