A Cyclically-Trained Adversarial Network for Invariant Representation Learning

06/21/2019
by   Jiawei Chen, et al.
4

We propose a cyclically-trained adversarial network to learn mappings from image space to a latent representation space and back such that the latent representation is invariant to a specified factor of variation (e.g., identity). The learned mappings also assure that the synthesized image is not only realistic, but has the same values for unspecified factors (e.g., pose and illumination) as the original image and a desired value of the specified factor. We encourage invariance to a specified factor, by applying adversarial training using a variational autoencoder in the image space as opposed to the latent space. We strengthen this invariance by introducing a cyclic training process (forward and backward pass). We also propose a new method to evaluate conditional generative networks. It compares how well different factors of variation can be predicted from the synthesized, as opposed to real, images. We demonstrate the effectiveness of our approach on factors such as identity, pose, illumination or style on three datasets and compare it with state-of-the-art methods. Our network produces good quality synthetic images and, interestingly, can be used to perform face morphing in latent space.

READ FULL TEXT

page 1

page 8

page 9

research
03/02/2020

VAE/WGAN-Based Image Representation Learning For Pose-Preserving Seamless Identity Replacement In Facial Images

We present a novel variational generative adversarial network (VGAN) bas...
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
05/27/2019

Plug-in Factorization for Latent Representation Disentanglement

In this work, we propose a Factorized Disentangler-Entangler Network (FD...
research
02/10/2021

Addressing the Topological Defects of Disentanglement via Distributed Operators

A core challenge in Machine Learning is to learn to disentangle natural ...
research
05/19/2018

Learning a face space for experiments on human identity

Generative models of human identity and appearance have broad applicabil...
research
06/20/2020

BRULÉ: Barycenter-Regularized Unsupervised Landmark Extraction

Unsupervised retrieval of image features is vital for many computer visi...

Please sign up or login with your details

Forgot password? Click here to reset