DNA-GAN: Learning Disentangled Representations from Multi-Attribute Images

11/15/2017
by   Taihong Xiao, et al.
0

Disentangling factors of variation has always been a challenging problem in representation learning. Existing algorithms suffer from many limitations, such as unpredictable disentangling factors, bad quality of generated images from encodings, lack of identity information, etc. In this paper, we propose a supervised algorithm called DNA-GAN trying to disentangle different attributes of images. The latent representations of images are DNA-like, in which each individual piece represents an independent factor of variation. By annihilating the recessive piece and swapping a certain piece of two latent representations, we obtain another two different representations which could be decoded into images. In order to obtain realistic images and also disentangled representations, we introduce the discriminator for adversarial training. Experiments on Multi-PIE and CelebA datasets demonstrate the effectiveness of our method and the advantage of overcoming limitations existing in other methods.

READ FULL TEXT

page 6

page 7

page 8

page 13

page 14

research
07/25/2020

Learning Disentangled Representations with Latent Variation Predictability

Latent traversal is a popular approach to visualize the disentangled lat...
research
04/27/2018

Disentangling Factors of Variation with Cycle-Consistent Variational Auto-Encoders

Generative models that learn disentangled representations for different ...
research
03/28/2018

ELEGANT: Exchanging Latent Encodings with GAN for Transferring Multiple Face Attributes

Recent studies on face attribute transfer have achieved great success, e...
research
11/20/2017

Disentangling Factors of Variation by Mixing Them

We propose an unsupervised approach to learn image representations that ...
research
10/01/2019

Elastic-InfoGAN: Unsupervised Disentangled Representation Learning in Imbalanced Data

We propose a novel unsupervised generative model, Elastic-InfoGAN, that ...
research
04/19/2022

Unsupervised Learning of Efficient Geometry-Aware Neural Articulated Representations

We propose an unsupervised method for 3D geometry-aware representation l...
research
02/26/2020

Representation Learning Through Latent Canonicalizations

We seek to learn a representation on a large annotated data source that ...

Please sign up or login with your details

Forgot password? Click here to reset