Alternating Back-Propagation for Generator Network
Han, Tian, Lu, Yang, Zhu, Song-Chun, Wu, Ying Nian
This paper proposes an alternating back-propagation algorithm for learning the generator network model. The model is a non-linear generalization of factor analysis. In this model, the mapping from the continuous latent factors to the observed signal is parametrized by a convolutional neural network. The alternating back-propagation algorithm iterates the following two steps: (1) Inferential back-propagation, which infers the latent factors by Langevin dynamics or gradient descent. (2) Learning back-propagation, which updates the parameters given the inferred latent factors by gradient descent. The gradient computations in both steps are powered by back-propagation, and they share most of their code in common. We show that the alternating back-propagation algorithm can learn realistic generator models of natural images, video sequences, and sounds. Moreover, it can also be used to learn from incomplete or indirect training data.
Dec-5-2016
- Country:
- North America > United States > California > Los Angeles County > Los Angeles (0.14)
- Genre:
- Research Report (0.64)
- Technology: