Literature DB >> 32315932

Generative adversarial networks with decoder-encoder output noises.

Guoqiang Zhong1, Wei Gao2, Yongbin Liu3, Youzhao Yang4, Da-Han Wang5, Kaizhu Huang6.   

Abstract

In recent years, research on image generation has been developing very fast. The generative adversarial network (GAN) emerges as a promising framework, which uses adversarial training to improve the generative ability of its generator. However, since GAN and most of its variants use randomly sampled noises as the input of their generators, they have to learn a mapping function from a whole random distribution to the image manifold. As the structures of the random distribution and the image manifold are generally different, this results in GAN and its variants difficult to train and converge. In this paper, we propose a novel deep model called generative adversarial networks with decoder-encoder output noises (DE-GANs), which take advantage of both the adversarial training and the variational Bayesian inference to improve GAN and its variants on image generation performances. DE-GANs use a pre-trained decoder-encoder architecture to map the random noise vectors to informative ones and feed them to the generator of the adversarial networks. Since the decoder-encoder architecture is trained with the same data set as the generator, its output vectors, as the inputs of the generator, could carry the intrinsic distribution information of the training images, which greatly improves the learnability of the generator and the quality of the generated images. Extensive experiments demonstrate the effectiveness of the proposed model, DE-GANs.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Keywords:  Generative adversarial networks; Generative models; Image generation; Noise; Variational autoencoders

Mesh:

Year:  2020        PMID: 32315932     DOI: 10.1016/j.neunet.2020.04.005

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  4 in total

1.  A survey on generative adversarial networks for imbalance problems in computer vision tasks.

Authors:  Vignesh Sampath; Iñaki Maurtua; Juan José Aguilar Martín; Aitor Gutierrez
Journal:  J Big Data       Date:  2021-01-29

2.  Analyzing protein dynamics from fluorescence intensity traces using unsupervised deep learning network.

Authors:  Jinghe Yuan; Rong Zhao; Jiachao Xu; Ming Cheng; Zidi Qin; Xiaolong Kou; Xiaohong Fang
Journal:  Commun Biol       Date:  2020-11-12

3.  Brain Tumor Classification Using a Combination of Variational Autoencoders and Generative Adversarial Networks.

Authors:  Bilal Ahmad; Jun Sun; Qi You; Vasile Palade; Zhongjie Mao
Journal:  Biomedicines       Date:  2022-01-21

Review 4.  Allosteric Regulation at the Crossroads of New Technologies: Multiscale Modeling, Networks, and Machine Learning.

Authors:  Gennady M Verkhivker; Steve Agajanian; Guang Hu; Peng Tao
Journal:  Front Mol Biosci       Date:  2020-07-09
  4 in total

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