Proposes PrOSe parameterization of latent space as product of orthogonal spheres to improve disentangled representation learning, with closed-form ortho-normality loss under equal block size assumption.
MGGAN: Solving Mode Collapse using Manifold Guided Training
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Mode collapse is a critical problem in training generative adversarial networks. To alleviate mode collapse, several recent studies introduce new objective functions, network architectures or alternative training schemes. However, their achievement is often the result of sacrificing the image quality. In this paper, we propose a new algorithm, namely a manifold guided generative adversarial network (MGGAN), which leverages a guidance network on existing GAN architecture to induce generator learning all modes of data distribution. Based on extensive evaluations, we show that our algorithm resolves mode collapse without losing image quality. In particular, we demonstrate that our algorithm is easily extendable to various existing GANs. Experimental analysis justifies that the proposed algorithm is an effective and efficient tool for training GANs.
fields
cs.CV 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Product of Orthogonal Spheres Parameterization for Disentangled Representation Learning
Proposes PrOSe parameterization of latent space as product of orthogonal spheres to improve disentangled representation learning, with closed-form ortho-normality loss under equal block size assumption.