OCGAN: One-Class Novelty Detection Using GANs With Constrained Latent Representations
Johns Hopkins University · Amazon (Germany)
Abstract
We present a novel model called OCGAN for the classical problem of one-class novelty detection, where, given a set of examples from a particular class, the goal is to determine if a query example is from the same class. Our solution is based on learning latent representations of in-class examples using a de-noising auto-encoder network. The key contribution of our work is our proposal to explicitly constrain the latent space to exclusively represent the given class. In order to accomplish this goal, firstly, we force the latent space to have bounded support by introducing a tanh activation in the encoder's output layer. Secondly, using a discriminator in the latent space that is trained adversarially, we…
Citation impact
- FWCI
- 43.09
- Percentile
- 100%
- References
- 43
Authors
3Topics & keywords
- Novelty detection
- Discriminator
- Computer science
- Class (philosophy)
- Bounded function
- Novelty
- Artificial intelligence
- Space (punctuation)
- Reduced inequalities