Identity statement area
Reference TypeConference Paper (Conference Proceedings)
Last Update2020: (UTC) administrator
Metadata Last Update2021: (UTC) administrator
Citation KeyFariaCarn:2020:WhArGe
TitleWhy are Generative Adversarial Networks so Fascinating and Annoying?
Access Date2022, Jan. 22
Number of Files1
Size8634 KiB
Context area
Author1 Faria, Fabio Augusto
2 Carneiro, Gustavo
Affiliation1 Universidade Federal de São Paulo
2 The University of Adelaide
EditorMusse, Soraia Raupp
Cesar Junior, Roberto Marcondes
Pelechano, Nuria
Wang, Zhangyang (Atlas)
Conference NameConference on Graphics, Patterns and Images, 33 (SIBGRAPI)
Conference LocationVirtual
DateNov. 7-10, 2020
PublisherIEEE Computer Society
Publisher CityLos Alamitos
Book TitleProceedings
Tertiary TypeTutorial
History (UTC)2020-09-30 13:05:44 :: -> administrator ::
2021-11-25 03:00:48 :: administrator -> :: 2020
Content and structure area
Is the master or a copy?is the master
Content Stagecompleted
Content TypeExternal Contribution
machine learning
computer vision
deep learning
AbstractThis paper focuses on one of the most fascinating and successful, but challenging generative models in the literature: the Generative Adversarial Networks (GAN). Recently, GAN has attracted much attention by the scientific community and the entertainment industry due to its effectiveness in generating complex and high-dimension data, which makes it a superior model for producing new samples, compared with other types of generative models. The traditional GAN (referred to as the Vanilla GAN) is composed of two neural networks, a generator and a discriminator, which are modeled using a minimax optimization. The generator creates samples to fool the discriminator that in turn tries to distinguish between the original and created samples. This optimization aims to train a model that can generate samples from the training set distribution. In addition to defining and explaining the Vanilla GAN and its main variations (e.g., DCGAN, WGAN, and SAGAN), this paper will present several applications that make GAN an extremely exciting method for the entertainment industry (e.g., style-transfer and image-to-image translation). Finally, the following measures to assess the quality of generated images are presented: Inception Search (IS), and Frechet Inception Distance (FID). > SDLA > SIBGRAPI 2020 > Why are Generative...
doc Directory Contentaccess
source Directory Contentthere are no files
agreement Directory Content
agreement.html 30/09/2020 10:05 1.2 KiB 
Conditions of access and use area
data URL
zipped data URL
Target FileGAN_Tutorial_SIBGRAPI2020.pdf
Update Permissionnot transferred
Allied materials area
Next Higher Units8JMKD3MGPEW34M/43G4L9S
Notes area
Empty Fieldsaccessionnumber archivingpolicy archivist area callnumber copyholder copyright creatorhistory descriptionlevel dissemination edition electronicmailaddress group holdercode isbn issn label lineage mark nextedition notes numberofvolumes orcid organization pages parameterlist parentrepositories previousedition previouslowerunit progress project readergroup readpermission resumeid rightsholder secondarydate secondarykey secondarymark secondarytype serieseditor session shorttitle sponsor subject tertiarymark type url versiontype volume
Description control area
e-Mail (login)