Multi-Adversarial Variational Autoencoder Networks

06/14/2019
by   Abdullah-Al-Zubaer Imran, et al.
4

The unsupervised training of GANs and VAEs has enabled them to generate realistic images mimicking real-world distributions and perform image-based unsupervised clustering or semi-supervised classification. Combining the power of these two generative models, we introduce Multi-Adversarial Variational autoEncoder Networks (MAVENs), a novel network architecture that incorporates an ensemble of discriminators in a VAE-GAN network, with simultaneous adversarial learning and variational inference. We apply MAVENs to the generation of synthetic images and propose a new distribution measure to quantify the quality of the generated images. Our experimental results using datasets from the computer vision and medical imaging domains---Street View House Numbers, CIFAR-10, and Chest X-Ray datasets---demonstrate competitive performance against state-of-the-art semi-supervised models both in image generation and classification tasks.

READ FULL TEXT

page 2

page 12

page 13

page 14

research
11/18/2015

Adversarial Autoencoders

In this paper, we propose the "adversarial autoencoder" (AAE), which is ...
research
01/13/2022

Conditional Variational Autoencoder with Balanced Pre-training for Generative Adversarial Networks

Class imbalance occurs in many real-world applications, including image ...
research
09/10/2018

Classification by Re-generation: Towards Classification Based on Variational Inference

As Deep Neural Networks (DNNs) are considered the state-of-the-art in ma...
research
11/11/2022

A Generative Approach for Production-Aware Industrial Network Traffic Modeling

The new wave of digitization induced by Industry 4.0 calls for ubiquitou...
research
01/31/2019

VAE-GANs for Probabilistic Compressive Image Recovery: Uncertainty Analysis

Recovering high-quality images from limited sensory data is a challengin...
research
12/18/2018

A Novel Variational Autoencoder with Applications to Generative Modelling, Classification, and Ordinal Regression

We develop a novel probabilistic generative model based on the variation...

Please sign up or login with your details

Forgot password? Click here to reset